srun_singularity=source /gscratch/comdata/users/nathante/cdsc_reddit/bin/activate && srun_singularity.sh
similarity_data=/gscratch/comdata/output/reddit_similarity
clustering_data=/gscratch/comdata/output/reddit_clustering
-selection_grid="--max_iter=3000 --convergence_iter=15,30,100 --damping=0.5,0.6,0.7,0.8,0.85,0.9,0.95,0.97,0.99, --preference_quantile=0.1,0.3,0.5,0.7,0.9"
+kmeans_selection_grid="--max_iter=3000 --n_init=[10] --n_clusters=[100,500,1000,1500,2000,2500,3000,2350,3500,3570,4000]"
#selection_grid="--max_iter=3000 --convergence_iter=[15] --preference_quantile=[0.5] --damping=[0.99]"
-all:$(clustering_data)/subreddit_comment_authors_10k/selection_data.csv $(clustering_data)/subreddit_comment_authors-tf_10k/selection_data.csv $(clustering_data)/subreddit_comment_terms_10k/selection_data.csv
+all:$(clustering_data)/subreddit_comment_authors_10k/kmeans/selection_data.csv $(clustering_data)/subreddit_comment_authors-tf_10k/kmeans/selection_data.csv $(clustering_data)/subreddit_comment_terms_10k/kmeans/selection_data.csv $(clustering_data)/subreddit_comment_terms_10k/affinity/selection_data.csv $(clustering_data)/subreddit_comment_authors_10k/affinity/selection_data.csv $(clustering_data)/subreddit_comment_authors-tf_10k/affinity/selection_data.csv
# $(clustering_data)/subreddit_comment_authors_30k.feather/SUCCESS $(clustering_data)/subreddit_authors-tf_similarities_30k.feather/SUCCESS
# $(clustering_data)/subreddit_comment_terms_30k.feather/SUCCESS
-$(clustering_data)/subreddit_comment_authors_10k/selection_data.csv:selection.py $(similarity_data)/subreddit_comment_authors_10k.feather clustering.py
- $(srun_singularity) python3 selection.py $(similarity_data)/subreddit_comment_authors_10k.feather $(clustering_data)/subreddit_comment_authors_10k $(clustering_data)/subreddit_comment_authors_10k/selection_data.csv $(selection_grid) -J 20
+$(clustering_data)/subreddit_comment_authors_10k/kmeans/selection_data.csv:selection.py $(similarity_data)/subreddit_comment_authors_10k.feather clustering.py
+ $(srun_singularity) python3 selection.py kmeans $(similarity_data)/subreddit_comment_authors_10k.feather $(clustering_data)/subreddit_comment_authors_10k/kmeans $(clustering_data)/subreddit_comment_authors_10k/kmeans/selection_data.csv $(kmeans_selection_grid)
-$(clustering_data)/subreddit_comment_terms_10k/selection_data.csv:selection.py $(similarity_data)/subreddit_comment_terms_10k.feather clustering.py
- $(srun_singularity) python3 selection.py $(similarity_data)/subreddit_comment_terms_10k.feather $(clustering_data)/subreddit_comment_terms_10k $(clustering_data)/subreddit_comment_terms_10k/selection_data.csv $(selection_grid) -J 20
+$(clustering_data)/subreddit_comment_terms_10k/kmeans/selection_data.csv:selection.py $(similarity_data)/subreddit_comment_terms_10k.feather clustering.py
+ $(srun_singularity) python3 selection.py kmeans $(similarity_data)/subreddit_comment_terms_10k.feather $(clustering_data)/subreddit_comment_terms_10k/kmeans $(clustering_data)/subreddit_comment_terms_10k/kmeans/selection_data.csv $(kmeans_selection_grid)
-$(clustering_data)/subreddit_comment_authors-tf_10k/selection_data.csv:clustering.py $(similarity_data)/subreddit_comment_authors-tf_10k.feather
- $(srun_singularity) python3 selection.py $(similarity_data)/subreddit_comment_authors-tf_10k.feather $(clustering_data)/subreddit_comment_authors-tf_10k $(clustering_data)/subreddit_comment_authors-tf_10k/selection_data.csv $(selection_grid) -J 20
+$(clustering_data)/subreddit_comment_authors-tf_10k/kmeans/selection_data.csv:clustering.py $(similarity_data)/subreddit_comment_authors-tf_10k.feather
+ $(srun_singularity) python3 selection.py kmeans $(similarity_data)/subreddit_comment_authors-tf_10k.feather $(clustering_data)/subreddit_comment_authors-tf_10k/kmeans $(clustering_data)/subreddit_comment_authors-tf_10k/kmeans/selection_data.csv $(kmeans_selection_grid)
+
+
+affinity_selection_grid="--max_iter=3000 --convergence_iter=[15] --preference_quantile=[0.5] --damping=[0.99]"
+$(clustering_data)/subreddit_comment_authors_10k/affinity/selection_data.csv:selection.py $(similarity_data)/subreddit_comment_authors_10k.feather clustering.py
+ $(srun_singularity) python3 selection.py affinity $(similarity_data)/subreddit_comment_authors_10k.feather $(clustering_data)/subreddit_comment_authors_10k/affinity $(clustering_data)/subreddit_comment_authors_10k/affinity/selection_data.csv $(affinity_selection_grid) -J 20
+
+$(clustering_data)/subreddit_comment_terms_10k/affinity/selection_data.csv:selection.py $(similarity_data)/subreddit_comment_terms_10k.feather clustering.py
+ $(srun_singularity) python3 selection.py affinity $(similarity_data)/subreddit_comment_terms_10k.feather $(clustering_data)/subreddit_comment_terms_10k/affinity $(clustering_data)/subreddit_comment_terms_10k/affinity/selection_data.csv $(affinity_selection_grid) -J 20
+
+$(clustering_data)/subreddit_comment_authors-tf_10k/affinity/selection_data.csv:clustering.py $(similarity_data)/subreddit_comment_authors-tf_10k.feather
+ $(srun_singularity) python3 selection.py affinity $(similarity_data)/subreddit_comment_authors-tf_10k.feather $(clustering_data)/subreddit_comment_authors-tf_10k/affinity $(clustering_data)/subreddit_comment_authors-tf_10k/affinity/selection_data.csv $(affinity_selection_grid) -J 20
+
+clean:
+ rm -f $(clustering_data)/subreddit_comment_authors-tf_10k/affinity/selection_data.csv
+ rm -f $(clustering_data)/subreddit_comment_authors_10k/affinity/selection_data.csv
+ rm -f $(clustering_data)/subreddit_comment_terms_10k/affinity/selection_data.csv
+ rm -f $(clustering_data)/subreddit_comment_authors-tf_10k/kmeans/selection_data.csv
+ rm -f $(clustering_data)/subreddit_comment_authors_10k/kmeans/selection_data.csv
+ rm -f $(clustering_data)/subreddit_comment_terms_10k/kmeans/selection_data.csv
+
+PHONY: clean
# $(clustering_data)/subreddit_comment_authors_30k.feather/SUCCESS:selection.py $(similarity_data)/subreddit_comment_authors_30k.feather clustering.py
# $(srun_singularity) python3 selection.py $(similarity_data)/subreddit_comment_authors_30k.feather $(clustering_data)/subreddit_comment_authors_30k $(selection_grid) -J 10 && touch $(clustering_data)/subreddit_comment_authors_30k.feather/SUCCESS
import sys
import pandas as pd
import numpy as np
-from sklearn.cluster import AffinityPropagation
+from sklearn.cluster import AffinityPropagation, KMeans
import fire
from pathlib import Path
+from multiprocessing import cpu_count
+from dataclasses import dataclass
+from clustering_base import sim_to_dist, process_clustering_result, clustering_result, read_similarity_mat
-def read_similarity_mat(similarities, use_threads=True):
- df = pd.read_feather(similarities, use_threads=use_threads)
- mat = np.array(df.drop('_subreddit',1))
- n = mat.shape[0]
- mat[range(n),range(n)] = 1
- return (df._subreddit,mat)
-
-def affinity_clustering(similarities, *args, **kwargs):
+def affinity_clustering(similarities, output, *args, **kwargs):
subreddits, mat = read_similarity_mat(similarities)
- return _affinity_clustering(mat, subreddits, *args, **kwargs)
+ clustering = _affinity_clustering(mat, *args, **kwargs)
+ cluster_data = process_clustering_result(clustering, subreddits)
+ cluster_data['algorithm'] = 'affinity'
+ return(cluster_data)
def _affinity_clustering(mat, subreddits, output, damping=0.9, max_iter=100000, convergence_iter=30, preference_quantile=0.5, random_state=1968, verbose=True):
'''
- similarities: feather file with a dataframe of similarity scores
+ similarities: matrix of similarity scores
preference_quantile: parameter controlling how many clusters to make. higher values = more clusters. 0.85 is a good value with 3000 subreddits.
damping: parameter controlling how iterations are merged. Higher values make convergence faster and more dependable. 0.85 is a good value for the 10000 subreddits by author.
'''
verbose=verbose,
random_state=random_state).fit(mat)
+ cluster_data = process_clustering_result(clustering, subreddits)
+ output = Path(output)
+ output.parent.mkdir(parents=True,exist_ok=True)
+ cluster_data.to_feather(output)
+ print(f"saved {output}")
+ return clustering
- print(f"clustering took {clustering.n_iter_} iterations")
- clusters = clustering.labels_
-
- print(f"found {len(set(clusters))} clusters")
+def kmeans_clustering(similarities, *args, **kwargs):
+ subreddits, mat = read_similarity_mat(similarities)
+ mat = sim_to_dist(mat)
+ clustering = _kmeans_clustering(mat, *args, **kwargs)
+ cluster_data = process_clustering_result(clustering, subreddits)
+ return(cluster_data)
- cluster_data = pd.DataFrame({'subreddit': subreddits,'cluster':clustering.labels_})
+def _kmeans_clustering(mat, output, n_clusters, n_init=10, max_iter=100000, random_state=1968, verbose=True):
- cluster_sizes = cluster_data.groupby("cluster").count()
- print(f"the largest cluster has {cluster_sizes.subreddit.max()} members")
+ clustering = KMeans(n_clusters=n_clusters,
+ n_init=n_init,
+ max_iter=max_iter,
+ random_state=random_state,
+ verbose=verbose
+ ).fit(mat)
- print(f"the median cluster has {cluster_sizes.subreddit.median()} members")
+ return clustering
- print(f"{(cluster_sizes.subreddit==1).sum()} clusters have 1 member")
- sys.stdout.flush()
- cluster_data.to_feather(output)
- print(f"saved {output}")
- return clustering
if __name__ == "__main__":
fire.Fire(affinity_clustering)
--- /dev/null
+from pathlib import Path
+import numpy as np
+import pandas as pd
+from dataclasses import dataclass
+
+def sim_to_dist(mat):
+ dist = 1-mat
+ dist[dist < 0] = 0
+ np.fill_diagonal(dist,0)
+ return dist
+
+def process_clustering_result(clustering, subreddits):
+
+ if hasattr(clustering,'n_iter_'):
+ print(f"clustering took {clustering.n_iter_} iterations")
+
+ clusters = clustering.labels_
+
+ print(f"found {len(set(clusters))} clusters")
+
+ cluster_data = pd.DataFrame({'subreddit': subreddits,'cluster':clustering.labels_})
+
+ cluster_sizes = cluster_data.groupby("cluster").count().reset_index()
+ print(f"the largest cluster has {cluster_sizes.loc[cluster_sizes.cluster!=-1].subreddit.max()} members")
+
+ print(f"the median cluster has {cluster_sizes.subreddit.median()} members")
+
+ print(f"{(cluster_sizes.subreddit==1).sum()} clusters have 1 member")
+
+ print(f"{(cluster_sizes.loc[cluster_sizes.cluster==-1,['subreddit']])} subreddits are in cluster -1",flush=True)
+
+ return cluster_data
+
+
+@dataclass
+class clustering_result:
+ outpath:Path
+ max_iter:int
+ silhouette_score:float
+ alt_silhouette_score:float
+ name:str
+ n_clusters:int
+
+def read_similarity_mat(similarities, use_threads=True):
+ df = pd.read_feather(similarities, use_threads=use_threads)
+ mat = np.array(df.drop('_subreddit',1))
+ n = mat.shape[0]
+ mat[range(n),range(n)] = 1
+ return (df._subreddit,mat)
--- /dev/null
+from clustering_base import sim_to_dist, process_clustering_result, clustering_result, read_similarity_mat
+from dataclasses import dataclass
+import hdbscan
+from sklearn.neighbors import NearestNeighbors
+import plotnine as pn
+import numpy as np
+from itertools import product, starmap
+import pandas as pd
+from sklearn.metrics import silhouette_score, silhouette_samples
+from pathlib import Path
+from multiprocessing import Pool, cpu_count
+import fire
+from pyarrow.feather import write_feather
+
+def test_select_hdbscan_clustering():
+ select_hdbscan_clustering("/gscratch/comdata/output/reddit_similarity/subreddit_comment_authors-tf_30k_LSI",
+ "test_hdbscan_author30k",
+ min_cluster_sizes=[2],
+ min_samples=[1,2],
+ cluster_selection_epsilons=[0,0.05,0.1,0.15],
+ cluster_selection_methods=['eom','leaf'],
+ lsi_dimensions='all')
+ inpath = "/gscratch/comdata/output/reddit_similarity/subreddit_comment_authors-tf_30k_LSI"
+ outpath = "test_hdbscan";
+ min_cluster_sizes=[2,3,4];
+ min_samples=[1,2,3];
+ cluster_selection_epsilons=[0,0.1,0.3,0.5];
+ cluster_selection_methods=['eom'];
+ lsi_dimensions='all'
+
+@dataclass
+class hdbscan_clustering_result(clustering_result):
+ min_cluster_size:int
+ min_samples:int
+ cluster_selection_epsilon:float
+ cluster_selection_method:str
+ lsi_dimensions:int
+ n_isolates:int
+ silhouette_samples:str
+
+def select_hdbscan_clustering(inpath,
+ outpath,
+ outfile=None,
+ min_cluster_sizes=[2],
+ min_samples=[1],
+ cluster_selection_epsilons=[0],
+ cluster_selection_methods=['eom'],
+ lsi_dimensions='all'
+ ):
+
+ inpath = Path(inpath)
+ outpath = Path(outpath)
+ outpath.mkdir(exist_ok=True, parents=True)
+
+ if lsi_dimensions == 'all':
+ lsi_paths = list(inpath.glob("*"))
+
+ else:
+ lsi_paths = [inpath / (dim + '.feather') for dim in lsi_dimensions]
+
+ lsi_nums = [p.stem for p in lsi_paths]
+ grid = list(product(lsi_nums,
+ min_cluster_sizes,
+ min_samples,
+ cluster_selection_epsilons,
+ cluster_selection_methods))
+
+ # fix the output file names
+ names = list(map(lambda t:'_'.join(map(str,t)),grid))
+
+ grid = [(inpath/(str(t[0])+'.feather'),outpath/(name + '.feather'), t[0], name) + t[1:] for t, name in zip(grid, names)]
+
+ with Pool(int(cpu_count()/4)) as pool:
+ mods = starmap(hdbscan_clustering, grid)
+
+ res = pd.DataFrame(mods)
+ if outfile is None:
+ outfile = outpath / "selection_data.csv"
+
+ res.to_csv(outfile)
+
+def hdbscan_clustering(similarities, output, lsi_dim, name, min_cluster_size=2, min_samples=1, cluster_selection_epsilon=0, cluster_selection_method='eom'):
+ subreddits, mat = read_similarity_mat(similarities)
+ mat = sim_to_dist(mat)
+ clustering = _hdbscan_clustering(mat,
+ min_cluster_size=min_cluster_size,
+ min_samples=min_samples,
+ cluster_selection_epsilon=cluster_selection_epsilon,
+ cluster_selection_method=cluster_selection_method,
+ metric='precomputed',
+ core_dist_n_jobs=cpu_count()
+ )
+
+ cluster_data = process_clustering_result(clustering, subreddits)
+ isolates = clustering.labels_ == -1
+ scoremat = mat[~isolates][:,~isolates]
+ score = silhouette_score(scoremat, clustering.labels_[~isolates], metric='precomputed')
+ cluster_data.to_feather(output)
+
+ silhouette_samp = silhouette_samples(mat, clustering.labels_, metric='precomputed')
+ silhouette_samp = pd.DataFrame({'subreddit':subreddits,'score':silhouette_samp})
+ silsampout = output.parent / ("silhouette_samples" + output.name)
+ silhouette_samp.to_feather(silsampout)
+
+ result = hdbscan_clustering_result(outpath=output,
+ max_iter=None,
+ silhouette_samples=silsampout,
+ silhouette_score=score,
+ alt_silhouette_score=score,
+ name=name,
+ min_cluster_size=min_cluster_size,
+ min_samples=min_samples,
+ cluster_selection_epsilon=cluster_selection_epsilon,
+ cluster_selection_method=cluster_selection_method,
+ lsi_dimensions=lsi_dim,
+ n_isolates=isolates.sum(),
+ n_clusters=len(set(clustering.labels_))
+ )
+
+
+
+ return(result)
+
+# for all runs we should try cluster_selection_epsilon = None
+# for terms we should try cluster_selection_epsilon around 0.56-0.66
+# for authors we should try cluster_selection_epsilon around 0.98-0.99
+def _hdbscan_clustering(mat, *args, **kwargs):
+ print(f"running hdbscan clustering. args:{args}. kwargs:{kwargs}")
+
+ print(mat)
+ clusterer = hdbscan.HDBSCAN(*args,
+ **kwargs,
+ )
+
+ clustering = clusterer.fit(mat.astype('double'))
+
+ return(clustering)
+
+def KNN_distances_plot(mat,outname,k=2):
+ nbrs = NearestNeighbors(n_neighbors=k,algorithm='auto',metric='precomputed').fit(mat)
+ distances, indices = nbrs.kneighbors(mat)
+ d2 = distances[:,-1]
+ df = pd.DataFrame({'dist':d2})
+ df = df.sort_values("dist",ascending=False)
+ df['idx'] = np.arange(0,d2.shape[0]) + 1
+ p = pn.qplot(x='idx',y='dist',data=df,geom='line') + pn.scales.scale_y_continuous(minor_breaks = np.arange(0,50)/50,
+ breaks = np.arange(0,10)/10)
+ p.save(outname,width=16,height=10)
+
+def make_KNN_plots():
+ similarities = "/gscratch/comdata/output/reddit_similarity/subreddit_comment_terms_10k.feather"
+ subreddits, mat = read_similarity_mat(similarities)
+ mat = sim_to_dist(mat)
+
+ KNN_distances_plot(mat,k=2,outname='terms_knn_dist2.png')
+
+ similarities = "/gscratch/comdata/output/reddit_similarity/subreddit_comment_authors_10k.feather"
+ subreddits, mat = read_similarity_mat(similarities)
+ mat = sim_to_dist(mat)
+ KNN_distances_plot(mat,k=2,outname='authors_knn_dist2.png')
+
+ similarities = "/gscratch/comdata/output/reddit_similarity/subreddit_comment_authors-tf_10k.feather"
+ subreddits, mat = read_similarity_mat(similarities)
+ mat = sim_to_dist(mat)
+ KNN_distances_plot(mat,k=2,outname='authors-tf_knn_dist2.png')
+
+if __name__ == "__main__":
+ df = pd.read_csv("test_hdbscan/selection_data.csv")
+ test_select_hdbscan_clustering()
+ check_clusters = pd.read_feather("test_hdbscan/500_2_2_0.1_eom.feather")
+ silscores = pd.read_feather("test_hdbscan/silhouette_samples500_2_2_0.1_eom.feather")
+ c = check_clusters.merge(silscores,on='subreddit')# fire.Fire(select_hdbscan_clustering)
from sklearn.metrics import silhouette_score
from sklearn.cluster import AffinityPropagation
from functools import partial
-from clustering import _affinity_clustering, read_similarity_mat
from dataclasses import dataclass
+from clustering import _affinity_clustering, read_similarity_mat, sim_to_dist, process_clustering_result, clustering_result
from multiprocessing import Pool, cpu_count, Array, Process
from pathlib import Path
from itertools import product, starmap
import sys
# silhouette is the only one that doesn't need the feature matrix. So it's probably the only one that's worth trying.
-
@dataclass
-class clustering_result:
- outpath:Path
+class affinity_clustering_result(clustering_result):
damping:float
- max_iter:int
convergence_iter:int
preference_quantile:float
- silhouette_score:float
- alt_silhouette_score:float
- name:str
+def do_affinity_clustering(damping, convergence_iter, preference_quantile, name, mat, subreddits, max_iter, outdir:Path, random_state, verbose, alt_mat, overwrite=False):
+ if name is None:
+ name = f"damping-{damping}_convergenceIter-{convergence_iter}_preferenceQuantile-{preference_quantile}"
+ print(name)
+ sys.stdout.flush()
+ outpath = outdir / (str(name) + ".feather")
+ outpath.parent.mkdir(parents=True,exist_ok=True)
+ print(outpath)
+ clustering = _affinity_clustering(mat, outpath, damping, max_iter, convergence_iter, preference_quantile, random_state, verbose)
+ cluster_data = process_clustering_result(clustering, subreddits)
+ mat = sim_to_dist(clustering.affinity_matrix_)
+
+ try:
+ score = silhouette_score(mat, clustering.labels_, metric='precomputed')
+ except ValueError:
+ score = None
+
+ if alt_mat is not None:
+ alt_distances = sim_to_dist(alt_mat)
+ try:
+ alt_score = silhouette_score(alt_mat, clustering.labels_, metric='precomputed')
+ except ValueError:
+ alt_score = None
+
+ res = affinity_clustering_result(outpath=outpath,
+ damping=damping,
+ max_iter=max_iter,
+ convergence_iter=convergence_iter,
+ preference_quantile=preference_quantile,
+ silhouette_score=score,
+ alt_silhouette_score=score,
+ name=str(name))
-def sim_to_dist(mat):
- dist = 1-mat
- dist[dist < 0] = 0
- np.fill_diagonal(dist,0)
- return dist
+ return res
-def do_clustering(damping, convergence_iter, preference_quantile, name, mat, subreddits, max_iter, outdir:Path, random_state, verbose, alt_mat, overwrite=False):
+def do_affinity_clustering(damping, convergence_iter, preference_quantile, name, mat, subreddits, max_iter, outdir:Path, random_state, verbose, alt_mat, overwrite=False):
if name is None:
name = f"damping-{damping}_convergenceIter-{convergence_iter}_preferenceQuantile-{preference_quantile}"
print(name)
sys.stdout.flush()
outpath = outdir / (str(name) + ".feather")
+ outpath.parent.mkdir(parents=True,exist_ok=True)
print(outpath)
clustering = _affinity_clustering(mat, subreddits, outpath, damping, max_iter, convergence_iter, preference_quantile, random_state, verbose)
mat = sim_to_dist(clustering.affinity_matrix_)
- score = silhouette_score(mat, clustering.labels_, metric='precomputed')
+ try:
+ score = silhouette_score(mat, clustering.labels_, metric='precomputed')
+ except ValueError:
+ score = None
if alt_mat is not None:
alt_distances = sim_to_dist(alt_mat)
- alt_score = silhouette_score(alt_mat, clustering.labels_, metric='precomputed')
+ try:
+ alt_score = silhouette_score(alt_mat, clustering.labels_, metric='precomputed')
+ except ValueError:
+ alt_score = None
res = clustering_result(outpath=outpath,
damping=damping,
return res
+
# alt similiarities is for checking the silhouette coefficient of an alternative measure of similarity (e.g., topic similarities for user clustering).
def select_affinity_clustering(similarities, outdir, outinfo, damping=[0.9], max_iter=100000, convergence_iter=[30], preference_quantile=[0.5], random_state=1968, verbose=True, alt_similarities=None, J=None):
hyper_grid = product(damping, convergence_iter, preference_quantile)
hyper_grid = (t + (str(i),) for i, t in enumerate(hyper_grid))
- _do_clustering = partial(do_clustering, mat=mat, subreddits=subreddits, outdir=outdir, max_iter=max_iter, random_state=random_state, verbose=verbose, alt_mat=alt_mat)
+ _do_clustering = partial(do_affinity_clustering, mat=mat, subreddits=subreddits, outdir=outdir, max_iter=max_iter, random_state=random_state, verbose=verbose, alt_mat=alt_mat)
# similarities = Array('d', mat)
# call pool.starmap
clustering_data = pool.starmap(_do_clustering, hyper_grid)
clustering_data = pd.DataFrame(list(clustering_data))
clustering_data.to_csv(outinfo)
+
return clustering_data
--- /dev/null
+from sklearn.metrics import silhouette_score
+from sklearn.cluster import AffinityPropagation
+from functools import partial
+from clustering import _kmeans_clustering, read_similarity_mat, sim_to_dist, process_clustering_result, clustering_result
+from dataclasses import dataclass
+from multiprocessing import Pool, cpu_count, Array, Process
+from pathlib import Path
+from itertools import product, starmap
+import numpy as np
+import pandas as pd
+import fire
+import sys
+
+@dataclass
+class kmeans_clustering_result(clustering_result):
+ n_clusters:int
+ n_init:int
+
+
+# silhouette is the only one that doesn't need the feature matrix. So it's probably the only one that's worth trying.
+
+def do_clustering(n_clusters, n_init, name, mat, subreddits, max_iter, outdir:Path, random_state, verbose, alt_mat, overwrite=False):
+ if name is None:
+ name = f"damping-{damping}_convergenceIter-{convergence_iter}_preferenceQuantile-{preference_quantile}"
+ print(name)
+ sys.stdout.flush()
+ outpath = outdir / (str(name) + ".feather")
+ print(outpath)
+ mat = sim_to_dist(mat)
+ clustering = _kmeans_clustering(mat, outpath, n_clusters, n_init, max_iter, random_state, verbose)
+
+ outpath.parent.mkdir(parents=True,exist_ok=True)
+ cluster_data.to_feather(outpath)
+ cluster_data = process_clustering_result(clustering, subreddits)
+
+ try:
+ score = silhouette_score(mat, clustering.labels_, metric='precomputed')
+ except ValueError:
+ score = None
+
+ if alt_mat is not None:
+ alt_distances = sim_to_dist(alt_mat)
+ try:
+ alt_score = silhouette_score(alt_mat, clustering.labels_, metric='precomputed')
+ except ValueError:
+ alt_score = None
+
+ res = kmeans_clustering_result(outpath=outpath,
+ max_iter=max_iter,
+ n_clusters=n_clusters,
+ n_init = n_init,
+ silhouette_score=score,
+ alt_silhouette_score=score,
+ name=str(name))
+
+ return res
+
+
+# alt similiarities is for checking the silhouette coefficient of an alternative measure of similarity (e.g., topic similarities for user clustering).
+def select_kmeans_clustering(similarities, outdir, outinfo, n_clusters=[1000], max_iter=100000, n_init=10, random_state=1968, verbose=True, alt_similarities=None):
+
+ n_clusters = list(map(int,n_clusters))
+ n_init = list(map(int,n_init))
+
+ if type(outdir) is str:
+ outdir = Path(outdir)
+
+ outdir.mkdir(parents=True,exist_ok=True)
+
+ subreddits, mat = read_similarity_mat(similarities,use_threads=True)
+
+ if alt_similarities is not None:
+ alt_mat = read_similarity_mat(alt_similarities,use_threads=True)
+ else:
+ alt_mat = None
+
+ # get list of tuples: the combinations of hyperparameters
+ hyper_grid = product(n_clusters, n_init)
+ hyper_grid = (t + (str(i),) for i, t in enumerate(hyper_grid))
+
+ _do_clustering = partial(do_clustering, mat=mat, subreddits=subreddits, outdir=outdir, max_iter=max_iter, random_state=random_state, verbose=verbose, alt_mat=alt_mat)
+
+ # call starmap
+ print("running clustering selection")
+ clustering_data = starmap(_do_clustering, hyper_grid)
+ clustering_data = pd.DataFrame(list(clustering_data))
+ clustering_data.to_csv(outinfo)
+
+ return clustering_data
+
+if __name__ == "__main__":
+ x = fire.Fire(select_kmeans_clustering)
--- /dev/null
+import fire
+from select_affinity import select_affinity_clustering
+from select_kmeans import select_kmeans_clustering
+
+if __name__ == "__main__":
+ fire.Fire({"kmeans":select_kmeans_clustering,
+ "affinity":select_affinity_clustering})
-all: /gscratch/comdata/output/reddit_similarity/subreddit_comment_authors_10000.parquet /gscratch/comdata/output/reddit_similarity/subreddit_comment_authors_10000.parquet /gscratch/comdata/output/reddit_similarity/subreddit_author_tf_similarities_10000.parquet /gscratch/comdata/output/reddit_similarity/subreddit_comment_authors_10000.parquet /gscratch/comdata/output/reddit_similarity/comment_terms.parquet
+#all: /gscratch/comdata/output/reddit_similarity/tfidf/comment_terms_130k.parquet /gscratch/comdata/output/reddit_similarity/tfidf/comment_authors_130k.parquet /gscratch/comdata/output/reddit_similarity/tfidf_weekly/comment_terms_130k.parquet /gscratch/comdata/output/reddit_similarity/tfidf_weekly/comment_authors_130k.parquet
+srun_singularity=source /gscratch/comdata/users/nathante/cdsc_reddit/bin/activate && srun_singularity.sh
+srun_singularity_huge=source /gscratch/comdata/users/nathante/cdsc_reddit/bin/activate && srun_singularity_huge.sh
+base_data=/gscratch/comdata/output/
+similarity_data=${base_data}/reddit_similarity
+tfidf_data=${similarity_data}/tfidf
+tfidf_weekly_data=${similarity_data}/tfidf_weekly
+similarity_weekly_data=${similarity_data}/weekly
+lsi_components=[10,50,100,200,300,400,500,600,700,850,1000,1500]
+
+lsi_similarities: ${similarity_data}/subreddit_comment_terms_10k_LSI ${similarity_data}/subreddit_comment_authors-tf_10k_LSI ${similarity_data}/subreddit_comment_authors_10k_LSI ${similarity_data}/subreddit_comment_terms_30k_LSI ${similarity_data}/subreddit_comment_authors-tf_30k_LSI ${similarity_data}/subreddit_comment_authors_30k_LSI
+
+all: ${tfidf_data}/comment_terms_100k.parquet ${tfidf_data}/comment_terms_30k.parquet ${tfidf_data}/comment_terms_10k.parquet ${tfidf_data}/comment_authors_100k.parquet ${tfidf_data}/comment_authors_30k.parquet ${tfidf_data}/comment_authors_10k.parquet ${similarity_data}/subreddit_comment_authors_30k.feather ${similarity_data}/subreddit_comment_authors_10k.feather ${similarity_data}/subreddit_comment_terms_10k.feather ${similarity_data}/subreddit_comment_terms_30k.feather ${similarity_data}/subreddit_comment_authors-tf_30k.feather ${similarity_data}/subreddit_comment_authors-tf_10k.feather ${similarity_data}/subreddit_comment_terms_100k.feather ${similarity_data}/subreddit_comment_authors_100k.feather ${similarity_data}/subreddit_comment_authors-tf_100k.feather ${similarity_weekly_data}/comment_terms.parquet
+
+#${tfidf_weekly_data}/comment_terms_100k.parquet ${tfidf_weekly_data}/comment_authors_100k.parquet ${tfidf_weekly_data}/comment_terms_30k.parquet ${tfidf_weekly_data}/comment_authors_30k.parquet ${similarity_weekly_data}/comment_terms_100k.parquet ${similarity_weekly_data}/comment_authors_100k.parquet ${similarity_weekly_data}/comment_terms_30k.parquet ${similarity_weekly_data}/comment_authors_30k.parquet
+
+# /gscratch/comdata/output/reddit_similarity/subreddit_comment_authors_130k.parquet /gscratch/comdata/output/reddit_similarity/subreddit_comment_authors_130k.parquet /gscratch/comdata/output/reddit_similarity/subreddit_author_tf_similarities_130k.parquet /gscratch/comdata/output/reddit_similarity/subreddit_comment_terms_130k.parquet /gscratch/comdata/output/reddit_similarity/comment_terms_weekly_130k.parquet
# all: /gscratch/comdata/output/reddit_similarity/subreddit_comment_terms_25000.parquet /gscratch/comdata/output/reddit_similarity/subreddit_comment_authors_25000.parquet /gscratch/comdata/output/reddit_similarity/subreddit_comment_authors_10000.parquet /gscratch/comdata/output/reddit_similarity/comment_terms_10000_weekly.parquet
+${similarity_weekly_data}/comment_terms.parquet: weekly_cosine_similarities.py similarities_helper.py /gscratch/comdata/output/reddit_ngrams/comment_terms.parquet ${similarity_data}/subreddits_by_num_comments.csv ${tfidf_weekly_data}/comment_terms.parquet
+ ${srun_singularity} python3 weekly_cosine_similarities.py terms --topN=10000 --outfile=${similarity_weekly_data}/comment_terms.parquet
+
+${similarity_data}/subreddit_comment_terms_10k.feather: ${tfidf_data}/comment_terms_100k.parquet similarities_helper.py
+ ${srun_singularity} python3 cosine_similarities.py term --outfile=${similarity_data}/subreddit_comment_terms_10k.feather --topN=10000
+
+${similarity_data}/subreddit_comment_terms_10k_LSI: ${tfidf_data}/comment_terms_100k.parquet similarities_helper.py
+ ${srun_singularity} python3 lsi_similarities.py term --outfile=${similarity_data}/subreddit_comment_terms_10k_LSI --topN=10000 --n_components=${lsi_components} --min_df=200
+
+${similarity_data}/subreddit_comment_terms_30k_LSI: ${tfidf_data}/comment_terms_100k.parquet similarities_helper.py
+ ${srun_singularity} python3 lsi_similarities.py term --outfile=${similarity_data}/subreddit_comment_terms_30k_LSI --topN=30000 --n_components=${lsi_components} --min_df=200
+
+${similarity_data}/subreddit_comment_terms_30k.feather: ${tfidf_data}/comment_terms_30k.parquet similarities_helper.py
+ ${srun_singularity} python3 cosine_similarities.py term --outfile=${similarity_data}/subreddit_comment_terms_30k.feather --topN=30000
+
+${similarity_data}/subreddit_comment_authors_30k.feather: ${tfidf_data}/comment_authors_30k.parquet similarities_helper.py
+ ${srun_singularity} python3 cosine_similarities.py author --outfile=${similarity_data}/subreddit_comment_authors_30k.feather --topN=30000
+
+${similarity_data}/subreddit_comment_authors_10k.feather: ${tfidf_data}/comment_authors_10k.parquet similarities_helper.py
+ ${srun_singularity} python3 cosine_similarities.py author --outfile=${similarity_data}/subreddit_comment_authors_10k.feather --topN=10000
+
+${similarity_data}/subreddit_comment_authors_10k_LSI: ${tfidf_data}/comment_authors_100k.parquet similarities_helper.py
+ ${srun_singularity} python3 lsi_similarities.py author --outfile=${similarity_data}/subreddit_comment_authors_10k_LSI --topN=10000 --n_components=${lsi_components} --min_df=2
+
+${similarity_data}/subreddit_comment_authors_30k_LSI: ${tfidf_data}/comment_authors_100k.parquet similarities_helper.py
+ ${srun_singularity} python3 lsi_similarities.py author --outfile=${similarity_data}/subreddit_comment_authors_30k_LSI --topN=30000 --n_components=${lsi_components} --min_df=2
+
+${similarity_data}/subreddit_comment_authors-tf_30k.feather: ${tfidf_data}/comment_authors_30k.parquet similarities_helper.py
+ ${srun_singularity} python3 cosine_similarities.py author-tf --outfile=${similarity_data}/subreddit_comment_authors-tf_30k.feather --topN=30000
+
+${similarity_data}/subreddit_comment_authors-tf_10k.feather: ${tfidf_data}/comment_authors_10k.parquet similarities_helper.py
+ ${srun_singularity} python3 cosine_similarities.py author-tf --outfile=${similarity_data}/subreddit_comment_authors-tf_10k.feather --topN=10000
+
+${similarity_data}/subreddit_comment_authors-tf_10k_LSI: ${tfidf_data}/comment_authors_100k.parquet similarities_helper.py
+ ${srun_singularity} python3 lsi_similarities.py author-tf --outfile=${similarity_data}/subreddit_comment_authors-tf_10k_LSI --topN=10000 --n_components=${lsi_components} --min_df=2
+
+${similarity_data}/subreddit_comment_authors-tf_30k_LSI: ${tfidf_data}/comment_authors_100k.parquet similarities_helper.py
+ ${srun_singularity} python3 lsi_similarities.py author-tf --outfile=${similarity_data}/subreddit_comment_authors-tf_30k_LSI --topN=30000 --n_components=${lsi_components} --min_df=2
+
+${similarity_data}/subreddit_comment_terms_100k.feather: ${tfidf_data}/comment_terms_100k.parquet similarities_helper.py
+ ${srun_singularity} python3 cosine_similarities.py term --outfile=${similarity_data}/subreddit_comment_terms_100k.feather --topN=100000
+
+${similarity_data}/subreddit_comment_authors_100k.feather: ${tfidf_data}/comment_authors_100k.parquet similarities_helper.py
+ ${srun_singularity} python3 cosine_similarities.py author --outfile=${similarity_data}/subreddit_comment_authors_100k.feather --topN=100000
+
+${similarity_data}/subreddit_comment_authors-tf_100k.feather: ${tfidf_data}/comment_authors_100k.parquet similarities_helper.py
+ ${srun_singularity} python3 cosine_similarities.py author-tf --outfile=${similarity_data}/subreddit_comment_authors-tf_100k.feather --topN=100000
+
+${tfidf_data}/comment_terms_100k.feather/: /gscratch/comdata/output/reddit_ngrams/comment_terms.parquet ${similarity_data}/subreddits_by_num_comments.csv
+ mkdir -p ${tfidf_data}/
+ start_spark_and_run.sh 4 tfidf.py terms --topN=100000 --outpath=${tfidf_data}/comment_terms_100k.feather
+
+${tfidf_data}/comment_terms_30k.feather: /gscratch/comdata/output/reddit_ngrams/comment_terms.parquet ${similarity_data}/subreddits_by_num_comments.csv
+ mkdir -p ${tfidf_data}/
+ start_spark_and_run.sh 4 tfidf.py terms --topN=30000 --outpath=${tfidf_data}/comment_terms_30k.feather
+
+${tfidf_data}/comment_terms_10k.feather: /gscratch/comdata/output/reddit_ngrams/comment_terms.parquet ${similarity_data}/subreddits_by_num_comments.csv
+ mkdir -p ${tfidf_data}/
+ start_spark_and_run.sh 4 tfidf.py terms --topN=10000 --outpath=${tfidf_data}/comment_terms_10k.feather
+
+${tfidf_data}/comment_authors_100k.feather: /gscratch/comdata/output/reddit_ngrams/comment_authors.parquet ${similarity_data}/subreddits_by_num_comments.csv
+ mkdir -p ${tfidf_data}/
+ start_spark_and_run.sh 4 tfidf.py authors --topN=100000 --outpath=${tfidf_data}/comment_authors_100k.feather
+
+${tfidf_data}/comment_authors_10k.parquet: /gscratch/comdata/output/reddit_ngrams/comment_authors.parquet ${similarity_data}/subreddits_by_num_comments.csv
+ mkdir -p ${tfidf_data}/
+ start_spark_and_run.sh 4 tfidf.py authors --topN=10000 --outpath=${tfidf_data}/comment_authors_10k.parquet
+
+${tfidf_data}/comment_authors_30k.parquet: /gscratch/comdata/output/reddit_ngrams/comment_authors.parquet ${similarity_data}/subreddits_by_num_comments.csv
+ mkdir -p ${tfidf_data}/
+ start_spark_and_run.sh 4 tfidf.py authors --topN=30000 --outpath=${tfidf_data}/comment_authors_30k.parquet
+
+${tfidf_data}/tfidf_weekly/comment_terms_100k.parquet: /gscratch/comdata/output/reddit_ngrams/comment_terms.parquet ${similarity_data}/subreddits_by_num_comments.csv
+ start_spark_and_run.sh 4 tfidf.py terms_weekly --topN=100000 --outpath=${similarity_data}/tfidf_weekly/comment_authors_100k.parquet
+
+${tfidf_data}/tfidf_weekly/comment_authors_100k.parquet: /gscratch/comdata/output/reddit_ngrams/comment_terms.parquet ${similarity_data}/subreddits_by_ppnum_comments.csv
+ start_spark_and_run.sh 4 tfidf.py authors_weekly --topN=100000 --outpath=${tfidf_weekly_data}/comment_authors_100k.parquet
+
+${tfidf_weekly_data}/comment_terms_30k.parquet: /gscratch/comdata/output/reddit_ngrams/comment_terms.parquet ${similarity_data}/subreddits_by_num_comments.csv
+ start_spark_and_run.sh 4 tfidf.py terms_weekly --topN=30000 --outpath=${tfidf_weekly_data}/comment_authors_30k.parquet
+
+${tfidf_weekly_data}/comment_authors_30k.parquet: /gscratch/comdata/output/reddit_ngrams/comment_terms.parquet ${similarity_data}/subreddits_by_num_comments.csv
+ start_spark_and_run.sh 4 tfidf.py authors_weekly --topN=30000 --outpath=${tfidf_weekly_data}/comment_authors_30k.parquet
+
+${similarity_weekly_data}/comment_terms_100k.parquet: weekly_cosine_similarities.py similarities_helper.py ${tfidf_weekly_data}/comment_terms_100k.parquet
+ ${srun_singularity} python3 weekly_cosine_similarities.py terms --topN=100000 --outfile=${similarity_weekly_data}/comment_authors_100k.parquet
+
+${similarity_weekly_data}/comment_authors_100k.parquet: weekly_cosine_similarities.py similarities_helper.py /gscratch/comdata/output/reddit_ngrams/comment_terms.parquet ${similarity_data}/subreddits_by_num_comments.csv ${tfidf_weekly_data}/comment_authors_100k.parquet
+ ${srun_singularity} python3 weekly_cosine_similarities.py authors --topN=100000 --outfile=${similarity_weekly_data}/comment_authors_100k.parquet
-# /gscratch/comdata/output/reddit_similarity/subreddit_comment_authors_25000.parquet: cosine_similarities.py /gscratch/comdata/output/reddit_similarity/tfidf/comment_authors.parquet
-# start_spark_and_run.sh 1 cosine_similarities.py author --outfile=/gscratch/comdata/output/reddit_similarity/subreddit_comment_authors_25000.feather
+${similarity_weekly_data}/comment_terms_30k.parquet: weekly_cosine_similarities.py similarities_helper.py /gscratch/comdata/output/reddit_ngrams/comment_terms.parquet ${similarity_data}/subreddits_by_num_comments.csv ${tfidf_weekly_data}/comment_terms_30k.parquet
+ ${srun_singularity} python3 weekly_cosine_similarities.py terms --topN=30000 --outfile=${similarity_weekly_data}/comment_authors_30k.parquet
-/gscratch/comdata/output/reddit_similarity/tfidf/comment_terms.parquet: tfidf.py similarities_helper.py /gscratch/comdata/output/reddit_ngrams/comment_terms.parquet /gscratch/comdata/output/reddit_similarity/subreddits_by_num_comments.csv
- start_spark_and_run.sh 1 tfidf.py terms --topN=10000
+${similarity_weekly_data}/comment_authors_30k.parquet: weekly_cosine_similarities.py similarities_helper.py /gscratch/comdata/output/reddit_ngrams/comment_terms.parquet ${similarity_data}/subreddits_by_num_comments.csv ${tfidf_weekly_data}/comment_authors_30k.parquet
+ ${srun_singularity} python3 weekly_cosine_similarities.py authors --topN=30000 --outfile=${similarity_weekly_data}/comment_authors_30k.parquet
-/gscratch/comdata/output/reddit_similarity/tfidf/comment_authors.parquet: tfidf.py similarities_helper.py /gscratch/comdata/output/reddit_ngrams/comment_authors.parquet /gscratch/comdata/output/reddit_similarity/subreddits_by_num_comments.csv
- start_spark_and_run.sh 1 tfidf.py authors --topN=10000
+# ${tfidf_weekly_data}/comment_authors_130k.parquet: tfidf.py similarities_helper.py /gscratch/comdata/output/reddit_ngrams/comment_authors.parquet /gscratch/comdata/output/reddit_similarity/subreddits_by_num_comments.csv
+# start_spark_and_run.sh 1 tfidf.py authors_weekly --topN=130000
-/gscratch/comdata/output/reddit_similarity/comment_authors_10000.parquet: cosine_similarities.py similarities_helper.py /gscratch/comdata/output/reddit_similarity/tfidf/comment_authors.parquet /gscratch/comdata/output/reddit_similarity/tfidf/comment_authors.parquet
- start_spark_and_run.sh 1 cosine_similarities.py author --outfile=/gscratch/comdata/output/reddit_similarity/comment_authors_10000.feather
+# /gscratch/comdata/output/reddit_similarity/comment_authors_10000.parquet: cosine_similarities.py similarities_helper.py /gscratch/comdata/output/reddit_similarity/tfidf/comment_authors.parquet /gscratch/comdata/output/reddit_similarity/tfidf/comment_authors.parquet
+# start_spark_and_run.sh 1 cosine_similarities.py author --outfile=/gscratch/comdata/output/reddit_similarity/comment_authors_10000.feather
-/gscratch/comdata/output/reddit_similarity/comment_terms.parquet: cosine_similarities.py similarities_helper.py /gscratch/comdata/output/reddit_similarity/tfidf/comment_terms.parquet
- start_spark_and_run.sh 1 cosine_similarities.py term --outfile=/gscratch/comdata/output/reddit_similarity/comment_terms_10000.feather
+# /gscratch/comdata/output/reddit_similarity/comment_terms.parquet: cosine_similarities.py similarities_helper.py /gscratch/comdata/output/reddit_similarity/tfidf/comment_terms.parquet
+# start_spark_and_run.sh 1 cosine_similarities.py term --outfile=/gscratch/comdata/output/reddit_similarity/comment_terms_10000.feather
-# /gscratch/comdata/output/reddit_similarity/comment_terms_10000_weekly.parquet: cosine_similarities.py /gscratch/comdata/output/reddit_similarity/tfidf_weekly/comment_authors.parquet
+# /gscratch/comdata/output/reddit_similarity/comment_terms_10000_weekly.parquet: cosine_similarities.py ${tfidf_weekly_data}/comment_authors.parquet
# start_spark_and_run.sh 1 weekly_cosine_similarities.py term --outfile=/gscratch/comdata/output/reddit_similarity/subreddit_comment_terms_10000_weely.parquet
-/gscratch/comdata/output/reddit_similarity/subreddit_author_tf_similarities_10000.parquet: cosine_similarities.py similarities_helper.py /gscratch/comdata/output/reddit_similarity/tfidf/comment_authors.parquet /gscratch/comdata/output/reddit_similarity/tfidf/comment_authors.parquet
- start_spark_and_run.sh 1 cosine_similarities.py author-tf --outfile=/gscratch/comdata/output/reddit_similarity/subreddit_author_tf_similarities_10000.parquet
+# /gscratch/comdata/output/reddit_similarity/subreddit_author_tf_similarities_10000.parquet: cosine_similarities.py similarities_helper.py /gscratch/comdata/output/reddit_similarity/tfidf/comment_authors.parquet /gscratch/comdata/output/reddit_similarity/tfidf/comment_authors.parquet
+# start_spark_and_run.sh 1 cosine_similarities.py author-tf --outfile=/gscratch/comdata/output/reddit_similarity/subreddit_author_tf_similarities_10000.parquet
import fire
from pathlib import Path
from similarities_helper import similarities, column_similarities
+from functools import partial
def cosine_similarities(infile, term_colname, outfile, min_df=None, max_df=None, included_subreddits=None, topN=500, exclude_phrases=False, from_date=None, to_date=None, tfidf_colname='tf_idf'):
return similarities(infile=infile, simfunc=column_similarities, term_colname=term_colname, outfile=outfile, min_df=min_df, max_df=max_df, included_subreddits=included_subreddits, topN=topN, exclude_phrases=exclude_phrases,from_date=from_date, to_date=to_date, tfidf_colname=tfidf_colname)
-
+# change so that these take in an input as an optional argument (for speed, but also for idf).
def term_cosine_similarities(outfile, min_df=None, max_df=None, included_subreddits=None, topN=500, exclude_phrases=False, from_date=None, to_date=None):
return cosine_similarities('/gscratch/comdata/output/reddit_similarity/tfidf/comment_terms_100k.parquet',
#!/usr/bin/bash
start_spark_cluster.sh
-spark-submit --master spark://$(hostname):18899 cosine_similarities.py term --outfile=/gscratch/comdata/output/reddit_similarity/comment_terms_10000.feather
-stop-all.sh
+singularity exec /gscratch/comdata/users/nathante/cdsc_base.sif spark-submit --master spark://$(hostname).hyak.local:7077 lsi_similarities.py author --outfile=/gscratch/comdata/output//reddit_similarity/subreddit_comment_authors_10k_LSI.feather --topN=10000
+singularity exec /gscratch/comdata/users/nathante/cdsc_base.sif stop-all.sh
--- /dev/null
+import pandas as pd
+import fire
+from pathlib import Path
+from similarities_helper import similarities, lsi_column_similarities
+from functools import partial
+
+def lsi_similarities(infile, term_colname, outfile, min_df=None, max_df=None, included_subreddits=None, topN=500, from_date=None, to_date=None, tfidf_colname='tf_idf',n_components=100,n_iter=5,random_state=1968,algorithm='arpack'):
+ print(n_components,flush=True)
+
+ simfunc = partial(lsi_column_similarities,n_components=n_components,n_iter=n_iter,random_state=random_state,algorithm=algorithm)
+
+ return similarities(infile=infile, simfunc=simfunc, term_colname=term_colname, outfile=outfile, min_df=min_df, max_df=max_df, included_subreddits=included_subreddits, topN=topN, from_date=from_date, to_date=to_date, tfidf_colname=tfidf_colname)
+
+# change so that these take in an input as an optional argument (for speed, but also for idf).
+def term_lsi_similarities(outfile, min_df=None, max_df=None, included_subreddits=None, topN=500, from_date=None, to_date=None, n_components=300,n_iter=5,random_state=1968,algorithm='arpack'):
+
+ return lsi_similarities('/gscratch/comdata/output/reddit_similarity/tfidf/comment_terms_100k.parquet',
+ 'term',
+ outfile,
+ min_df,
+ max_df,
+ included_subreddits,
+ topN,
+ from_date,
+ to_date,
+ n_components=n_components
+ )
+
+def author_lsi_similarities(outfile, min_df=2, max_df=None, included_subreddits=None, topN=10000, from_date=None, to_date=None,n_components=300,n_iter=5,random_state=1968,algorithm='arpack'):
+ return lsi_similarities('/gscratch/comdata/output/reddit_similarity/tfidf/comment_authors_100k.parquet',
+ 'author',
+ outfile,
+ min_df,
+ max_df,
+ included_subreddits,
+ topN,
+ from_date=from_date,
+ to_date=to_date,
+ n_components=n_components
+ )
+
+def author_tf_similarities(outfile, min_df=2, max_df=None, included_subreddits=None, topN=10000, from_date=None, to_date=None,n_components=300,n_iter=5,random_state=1968,algorithm='arpack'):
+ return lsi_similarities('/gscratch/comdata/output/reddit_similarity/tfidf/comment_authors_100k.parquet',
+ 'author',
+ outfile,
+ min_df,
+ max_df,
+ included_subreddits,
+ topN,
+ from_date=from_date,
+ to_date=to_date,
+ tfidf_colname='relative_tf',
+ n_components=n_components
+ )
+
+
+if __name__ == "__main__":
+ fire.Fire({'term':term_lsi_similarities,
+ 'author':author_lsi_similarities,
+ 'author-tf':author_tf_similarities})
+
from pyspark.sql import Window
from pyspark.sql import functions as f
from enum import Enum
+from multiprocessing import cpu_count, Pool
from pyspark.mllib.linalg.distributed import CoordinateMatrix
from tempfile import TemporaryDirectory
import pyarrow
MaxTF = 1
Norm05 = 2
-infile = "/gscratch/comdata/output/reddit_similarity/tfidf/comment_authors_100k.parquet"
+infile = "/gscratch/comdata/output/reddit_similarity/tfidf_weekly/comment_terms.parquet"
cache_file = "/gscratch/comdata/users/nathante/cdsc_reddit/similarities/term_tfidf_entries_bak.parquet"
-def reindex_tfidf_time_interval(infile, term_colname, min_df=None, max_df=None, included_subreddits=None, topN=500, exclude_phrases=False, from_date=None, to_date=None):
- term = term_colname
- term_id = term + '_id'
- term_id_new = term + '_id_new'
-
- spark = SparkSession.builder.getOrCreate()
- conf = spark.sparkContext.getConf()
- print(exclude_phrases)
- tfidf_weekly = spark.read.parquet(infile)
-
- # create the time interval
- if from_date is not None:
- if type(from_date) is str:
- from_date = datetime.fromisoformat(from_date)
-
- tfidf_weekly = tfidf_weekly.filter(tfidf_weekly.week >= from_date)
-
- if to_date is not None:
- if type(to_date) is str:
- to_date = datetime.fromisoformat(to_date)
- tfidf_weekly = tfidf_weekly.filter(tfidf_weekly.week < to_date)
-
- tfidf = tfidf_weekly.groupBy(["subreddit","week", term_id, term]).agg(f.sum("tf").alias("tf"))
- tfidf = _calc_tfidf(tfidf, term_colname, tf_weight.Norm05)
- tempdir = prep_tfidf_entries(tfidf, term_colname, min_df, max_df, included_subreddits)
- tfidf = spark.read_parquet(tempdir.name)
- subreddit_names = tfidf.select(['subreddit','subreddit_id_new']).distinct().toPandas()
- subreddit_names = subreddit_names.sort_values("subreddit_id_new")
- subreddit_names['subreddit_id_new'] = subreddit_names['subreddit_id_new'] - 1
- return(tempdir, subreddit_names)
+def termauthor_tfidf(term_tfidf_callable, author_tfidf_callable):
+
# subreddits missing after this step don't have any terms that have a high enough idf
-def reindex_tfidf(infile, term_colname, min_df=None, max_df=None, included_subreddits=None, topN=500, tf_family=tf_weight.MaxTF):
- spark = SparkSession.builder.getOrCreate()
- conf = spark.sparkContext.getConf()
- print(exclude_phrases)
-
+# try rewriting without merges
+def reindex_tfidf(infile, term_colname, min_df=None, max_df=None, included_subreddits=None, topN=500, week=None, from_date=None, to_date=None, rescale_idf=True, tf_family=tf_weight.MaxTF):
+ print("loading tfidf", flush=True)
tfidf_ds = ds.dataset(infile)
if included_subreddits is None:
if max_df is not None:
ds_filter &= ds.field("count") <= max_df
- term = term_colname
- term_id = term + '_id'
- term_id_new = term + '_id_new'
-
- df = tfidf_ds.to_table(filter=ds_filter,columns=['subreddit','subreddit_id',term_id,'relative_tf']).to_pandas()
-
- sub_ids = df.subreddit_id.drop_duplicates()
- new_sub_ids = pd.DataFrame({'subreddit_id':old,'subreddit_id_new':new} for new, old in enumerate(sorted(sub_ids)))
- df = df.merge(new_sub_ids,on='subreddit_id',how='inner',validate='many_to_one')
+ if week is not None:
+ ds_filter &= ds.field("week") == week
- new_count = df.groupby(term_id)[term_id].aggregate(new_count='count').reset_index()
- df = df.merge(new_count,on=term_id,how='inner',validate='many_to_one')
-
- term_ids = df[term_id].drop_duplicates()
- new_term_ids = pd.DataFrame({term_id:old,term_id_new:new} for new, old in enumerate(sorted(term_ids)))
+ if from_date is not None:
+ ds_filter &= ds.field("week") >= from_date
- df = df.merge(new_term_ids, on=term_id, validate='many_to_one')
- N_docs = sub_ids.shape[0]
+ if to_date is not None:
+ ds_filter &= ds.field("week") <= to_date
- df['idf'] = np.log(N_docs/(1+df.new_count)) + 1
+ term = term_colname
+ term_id = term + '_id'
+ term_id_new = term + '_id_new'
+
+ projection = {
+ 'subreddit_id':ds.field('subreddit_id'),
+ term_id:ds.field(term_id),
+ 'relative_tf':ds.field("relative_tf").cast('float32')
+ }
+
+ if not rescale_idf:
+ projection = {
+ 'subreddit_id':ds.field('subreddit_id'),
+ term_id:ds.field(term_id),
+ 'relative_tf':ds.field('relative_tf').cast('float32'),
+ 'tf_idf':ds.field('tf_idf').cast('float32')}
- # agg terms by subreddit to make sparse tf/df vectors
- if tf_family == tf_weight.MaxTF:
- df["tf_idf"] = df.relative_tf * df.idf
- else: # tf_fam = tf_weight.Norm05
- df["tf_idf"] = (0.5 + 0.5 * df.relative_tf) * df.idf
+ tfidf_ds = ds.dataset(infile)
- subreddit_names = df.loc[:,['subreddit','subreddit_id_new']].drop_duplicates()
+ df = tfidf_ds.to_table(filter=ds_filter,columns=projection)
+
+ df = df.to_pandas(split_blocks=True,self_destruct=True)
+ print("assigning indexes",flush=True)
+ df['subreddit_id_new'] = df.groupby("subreddit_id").ngroup()
+ grouped = df.groupby(term_id)
+ df[term_id_new] = grouped.ngroup()
+
+ if rescale_idf:
+ print("computing idf", flush=True)
+ df['new_count'] = grouped[term_id].transform('count')
+ N_docs = df.subreddit_id_new.max() + 1
+ df['idf'] = np.log(N_docs/(1+df.new_count),dtype='float32') + 1
+ if tf_family == tf_weight.MaxTF:
+ df["tf_idf"] = df.relative_tf * df.idf
+ else: # tf_fam = tf_weight.Norm05
+ df["tf_idf"] = (0.5 + 0.5 * df.relative_tf) * df.idf
+
+ print("assigning names")
+ subreddit_names = tfidf_ds.to_table(filter=ds_filter,columns=['subreddit','subreddit_id'])
+ batches = subreddit_names.to_batches()
+
+ with Pool(cpu_count()) as pool:
+ chunks = pool.imap_unordered(pull_names,batches)
+ subreddit_names = pd.concat(chunks,copy=False).drop_duplicates()
+
+ subreddit_names = subreddit_names.set_index("subreddit_id")
+ new_ids = df.loc[:,['subreddit_id','subreddit_id_new']].drop_duplicates()
+ new_ids = new_ids.set_index('subreddit_id')
+ subreddit_names = subreddit_names.join(new_ids,on='subreddit_id').reset_index()
+ subreddit_names = subreddit_names.drop("subreddit_id",1)
subreddit_names = subreddit_names.sort_values("subreddit_id_new")
return(df, subreddit_names)
+def pull_names(batch):
+ return(batch.to_pandas().drop_duplicates())
-def similarities(infile, simfunc, term_colname, outfile, min_df=None, max_df=None, included_subreddits=None, topN=500, exclude_phrases=False, from_date=None, to_date=None, tfidf_colname='tf_idf'):
+def similarities(infile, simfunc, term_colname, outfile, min_df=None, max_df=None, included_subreddits=None, topN=500, from_date=None, to_date=None, tfidf_colname='tf_idf'):
'''
tfidf_colname: set to 'relative_tf' to use normalized term frequency instead of tf-idf, which can be useful for author-based similarities.
'''
- if from_date is not None or to_date is not None:
- tempdir, subreddit_names = reindex_tfidf_time_interval(infile, term_colname=term_colname, min_df=min_df, max_df=max_df, included_subreddits=included_subreddits, topN=topN, exclude_phrases=False, from_date=from_date, to_date=to_date)
- mat = read_tfidf_matrix(tempdir.name, term_colname, tfidf_colname)
- else:
- entries, subreddit_names = reindex_tfidf(infile, term_colname=term_colname, min_df=min_df, max_df=max_df, included_subreddits=included_subreddits, topN=topN, exclude_phrases=False)
- mat = csr_matrix((entries[tfidf_colname],(entries[term_id_new]-1, entries.subreddit_id_new-1)))
-
- print("loading matrix")
- # mat = read_tfidf_matrix("term_tfidf_entries7ejhvnvl.parquet", term_colname)
+ def proc_sims(sims, outfile):
+ if issparse(sims):
+ sims = sims.todense()
- print(f'computing similarities on mat. mat.shape:{mat.shape}')
- print(f"size of mat is:{mat.data.nbytes}")
- sims = simfunc(mat)
- del mat
+ print(f"shape of sims:{sims.shape}")
+ print(f"len(subreddit_names.subreddit.values):{len(subreddit_names.subreddit.values)}",flush=True)
+ sims = pd.DataFrame(sims)
+ sims = sims.rename({i:sr for i, sr in enumerate(subreddit_names.subreddit.values)}, axis=1)
+ sims['_subreddit'] = subreddit_names.subreddit.values
- if issparse(sims):
- sims = sims.todense()
+ p = Path(outfile)
- print(f"shape of sims:{sims.shape}")
- print(f"len(subreddit_names.subreddit.values):{len(subreddit_names.subreddit.values)}")
- sims = pd.DataFrame(sims)
- sims = sims.rename({i:sr for i, sr in enumerate(subreddit_names.subreddit.values)}, axis=1)
- sims['_subreddit'] = subreddit_names.subreddit.values
+ output_feather = Path(str(p).replace("".join(p.suffixes), ".feather"))
+ output_csv = Path(str(p).replace("".join(p.suffixes), ".csv"))
+ output_parquet = Path(str(p).replace("".join(p.suffixes), ".parquet"))
+ outfile.parent.mkdir(exist_ok=True, parents=True)
- p = Path(outfile)
+ sims.to_feather(outfile)
- output_feather = Path(str(p).replace("".join(p.suffixes), ".feather"))
- output_csv = Path(str(p).replace("".join(p.suffixes), ".csv"))
- output_parquet = Path(str(p).replace("".join(p.suffixes), ".parquet"))
-
- sims.to_feather(outfile)
-# tempdir.cleanup()
-
-def read_tfidf_matrix_weekly(path, term_colname, week, tfidf_colname='tf_idf'):
term = term_colname
term_id = term + '_id'
term_id_new = term + '_id_new'
- dataset = ds.dataset(path,format='parquet')
- entries = dataset.to_table(columns=[tfidf_colname,'subreddit_id_new', term_id_new],filter=ds.field('week')==week).to_pandas()
- return(csr_matrix((entries[tfidf_colname], (entries[term_id_new]-1, entries.subreddit_id_new-1))))
+ entries, subreddit_names = reindex_tfidf(infile, term_colname=term_colname, min_df=min_df, max_df=max_df, included_subreddits=included_subreddits, topN=topN,from_date=from_date,to_date=to_date)
+ mat = csr_matrix((entries[tfidf_colname],(entries[term_id_new], entries.subreddit_id_new)))
-def read_tfidf_matrix(path, term_colname, tfidf_colname='tf_idf'):
- term = term_colname
- term_id = term + '_id'
- term_id_new = term + '_id_new'
- dataset = ds.dataset(path,format='parquet')
- print(f"tfidf_colname:{tfidf_colname}")
- entries = dataset.to_table(columns=[tfidf_colname, 'subreddit_id_new',term_id_new]).to_pandas()
- return(csr_matrix((entries[tfidf_colname],(entries[term_id_new]-1, entries.subreddit_id_new-1))))
-
+ print("loading matrix")
+
+ # mat = read_tfidf_matrix("term_tfidf_entries7ejhvnvl.parquet", term_colname)
+
+ print(f'computing similarities on mat. mat.shape:{mat.shape}')
+ print(f"size of mat is:{mat.data.nbytes}",flush=True)
+ sims = simfunc(mat)
+ del mat
+
+ if hasattr(sims,'__next__'):
+ for simmat, name in sims:
+ proc_sims(simmat, Path(outfile)/(str(name) + ".feather"))
+ else:
+ proc_sims(simmat, outfile)
def write_weekly_similarities(path, sims, week, names):
sims['week'] = week
return intersection / den
+def test_lsi_sims():
+ term = "term"
+ term_id = term + '_id'
+ term_id_new = term + '_id_new'
+
+ t1 = time.perf_counter()
+ entries, subreddit_names = reindex_tfidf("/gscratch/comdata/output/reddit_similarity/tfidf/comment_terms_100k_repartitioned.parquet",
+ term_colname='term',
+ min_df=2000,
+ topN=10000
+ )
+ t2 = time.perf_counter()
+ print(f"first load took:{t2 - t1}s")
+
+ entries, subreddit_names = reindex_tfidf("/gscratch/comdata/output/reddit_similarity/tfidf/comment_terms_100k.parquet",
+ term_colname='term',
+ min_df=2000,
+ topN=10000
+ )
+ t3=time.perf_counter()
+
+ print(f"second load took:{t3 - t2}s")
+
+ mat = csr_matrix((entries['tf_idf'],(entries[term_id_new], entries.subreddit_id_new)))
+ sims = list(lsi_column_similarities(mat, [10,50]))
+ sims_og = sims
+ sims_test = list(lsi_column_similarities(mat,[10,50],algorithm='randomized',n_iter=10))
+
# n_components is the latent dimensionality. sklearn recommends 100. More might be better
-# if algorithm is 'random' instead of 'arpack' then n_iter gives the number of iterations.
+# if n_components is a list we'll return a list of similarities with different latent dimensionalities
+# if algorithm is 'randomized' instead of 'arpack' then n_iter gives the number of iterations.
# this function takes the svd and then the column similarities of it
-def lsi_column_similarities(tfidfmat,n_components=300,n_iter=5,random_state=1968,algorithm='arpack'):
+def lsi_column_similarities(tfidfmat,n_components=300,n_iter=10,random_state=1968,algorithm='randomized'):
# first compute the lsi of the matrix
# then take the column similarities
- svd = TruncatedSVD(n_components=n_components,random_state=random_state,algorithm='arpack')
+ print("running LSI",flush=True)
+
+ if type(n_components) is int:
+ n_components = [n_components]
+
+ n_components = sorted(n_components,reverse=True)
+
+ svd_components = n_components[0]
+ svd = TruncatedSVD(n_components=svd_components,random_state=random_state,algorithm=algorithm,n_iter=n_iter)
mod = svd.fit(tfidfmat.T)
lsimat = mod.transform(tfidfmat.T)
- sims = column_similarities(lsimat)
- return sims
+ for n_dims in n_components:
+ sims = column_similarities(lsimat[:,np.arange(n_dims)])
+ if len(n_components) > 1:
+ yield (sims, n_dims)
+ else:
+ return sims
def column_similarities(mat):
return 1 - pairwise_distances(mat,metric='cosine')
- # if issparse(mat):
- # norm = np.matrix(np.power(mat.power(2).sum(axis=0),0.5,dtype=np.float32))
- # mat = mat.multiply(1/norm)
- # else:
- # norm = np.matrix(np.power(np.power(mat,2).sum(axis=0),0.5,dtype=np.float32))
- # mat = np.multiply(mat,1/norm)
- # sims = mat.T @ mat
- # return(sims)
-
-
-def prep_tfidf_entries_weekly(tfidf, term_colname, min_df, max_df, included_subreddits):
- term = term_colname
- term_id = term + '_id'
- term_id_new = term + '_id_new'
-
- if min_df is None:
- min_df = 0.1 * len(included_subreddits)
- tfidf = tfidf.filter(f.col('count') >= min_df)
- if max_df is not None:
- tfidf = tfidf.filter(f.col('count') <= max_df)
-
- tfidf = tfidf.filter(f.col("subreddit").isin(included_subreddits))
-
- # we might not have the same terms or subreddits each week, so we need to make unique ids for each week.
- sub_ids = tfidf.select(['subreddit_id','week']).distinct()
- sub_ids = sub_ids.withColumn("subreddit_id_new",f.row_number().over(Window.partitionBy('week').orderBy("subreddit_id")))
- tfidf = tfidf.join(sub_ids,['subreddit_id','week'])
-
- # only use terms in at least min_df included subreddits in a given week
- new_count = tfidf.groupBy([term_id,'week']).agg(f.count(term_id).alias('new_count'))
- tfidf = tfidf.join(new_count,[term_id,'week'],how='inner')
-
- # reset the term ids
- term_ids = tfidf.select([term_id,'week']).distinct()
- term_ids = term_ids.withColumn(term_id_new,f.row_number().over(Window.partitionBy('week').orderBy(term_id)))
- tfidf = tfidf.join(term_ids,[term_id,'week'])
-
- tfidf = tfidf.withColumnRenamed("tf_idf","tf_idf_old")
- tfidf = tfidf.withColumn("tf_idf", (tfidf.relative_tf * tfidf.idf).cast('float'))
-
- tempdir =TemporaryDirectory(suffix='.parquet',prefix='term_tfidf_entries',dir='.')
-
- tfidf = tfidf.repartition('week')
-
- tfidf.write.parquet(tempdir.name,mode='overwrite',compression='snappy')
- return(tempdir)
-
-
-def prep_tfidf_entries(tfidf, term_colname, min_df, max_df, included_subreddits):
- term = term_colname
- term_id = term + '_id'
- term_id_new = term + '_id_new'
-
- if min_df is None:
- min_df = 0.1 * len(included_subreddits)
-
- tfidf = tfidf.filter(f.col('count') >= min_df)
- if max_df is not None:
- tfidf = tfidf.filter(f.col('count') <= max_df)
-
- tfidf = tfidf.filter(f.col("subreddit").isin(included_subreddits))
-
- # reset the subreddit ids
- sub_ids = tfidf.select('subreddit_id').distinct()
- sub_ids = sub_ids.withColumn("subreddit_id_new", f.row_number().over(Window.orderBy("subreddit_id")))
- tfidf = tfidf.join(sub_ids,'subreddit_id')
-
- # only use terms in at least min_df included subreddits
- new_count = tfidf.groupBy(term_id).agg(f.count(term_id).alias('new_count'))
- tfidf = tfidf.join(new_count,term_id,how='inner')
-
- # reset the term ids
- term_ids = tfidf.select([term_id]).distinct()
- term_ids = term_ids.withColumn(term_id_new,f.row_number().over(Window.orderBy(term_id)))
- tfidf = tfidf.join(term_ids,term_id)
-
- tfidf = tfidf.withColumnRenamed("tf_idf","tf_idf_old")
- tfidf = tfidf.withColumn("tf_idf", (tfidf.relative_tf * tfidf.idf).cast('float'))
-
- tempdir =TemporaryDirectory(suffix='.parquet',prefix='term_tfidf_entries',dir='.')
-
- tfidf.write.parquet(tempdir.name,mode='overwrite',compression='snappy')
- return tempdir
-
-
-# try computing cosine similarities using spark
-def spark_cosine_similarities(tfidf, term_colname, min_df, included_subreddits, similarity_threshold):
- term = term_colname
- term_id = term + '_id'
- term_id_new = term + '_id_new'
-
- if min_df is None:
- min_df = 0.1 * len(included_subreddits)
-
- tfidf = tfidf.filter(f.col("subreddit").isin(included_subreddits))
- tfidf = tfidf.cache()
-
- # reset the subreddit ids
- sub_ids = tfidf.select('subreddit_id').distinct()
- sub_ids = sub_ids.withColumn("subreddit_id_new",f.row_number().over(Window.orderBy("subreddit_id")))
- tfidf = tfidf.join(sub_ids,'subreddit_id')
-
- # only use terms in at least min_df included subreddits
- new_count = tfidf.groupBy(term_id).agg(f.count(term_id).alias('new_count'))
- tfidf = tfidf.join(new_count,term_id,how='inner')
-
- # reset the term ids
- term_ids = tfidf.select([term_id]).distinct()
- term_ids = term_ids.withColumn(term_id_new,f.row_number().over(Window.orderBy(term_id)))
- tfidf = tfidf.join(term_ids,term_id)
-
- tfidf = tfidf.withColumnRenamed("tf_idf","tf_idf_old")
- tfidf = tfidf.withColumn("tf_idf", tfidf.relative_tf * tfidf.idf)
-
- # step 1 make an rdd of entires
- # sorted by (dense) spark subreddit id
- n_partitions = int(len(included_subreddits)*2 / 5)
-
- entries = tfidf.select(f.col(term_id_new)-1,f.col("subreddit_id_new")-1,"tf_idf").rdd.repartition(n_partitions)
-
- # put like 10 subredis in each partition
-
- # step 2 make it into a distributed.RowMatrix
- coordMat = CoordinateMatrix(entries)
-
- coordMat = CoordinateMatrix(coordMat.entries.repartition(n_partitions))
-
- # this needs to be an IndexedRowMatrix()
- mat = coordMat.toRowMatrix()
-
- #goal: build a matrix of subreddit columns and tf-idfs rows
- sim_dist = mat.columnSimilarities(threshold=similarity_threshold)
-
- return (sim_dist, tfidf)
def build_weekly_tfidf_dataset(df, include_subs, term_colname, tf_family=tf_weight.Norm05):
else: # tf_fam = tf_weight.Norm05
df = df.withColumn("tf_idf", (0.5 + 0.5 * df.relative_tf) * df.idf)
- return df
+ df = df.repartition(400,'subreddit','week')
+ dfwriter = df.write.partitionBy("week").sortBy("subreddit")
+ return dfwriter
def _calc_tfidf(df, term_colname, tf_family):
term = term_colname
df = df.join(max_subreddit_terms, on='subreddit')
- df = df.withColumn("relative_tf", df.tf / df.sr_max_tf)
+ df = df.withColumn("relative_tf", (df.tf / df.sr_max_tf))
# group by term. term is unique
idf = df.groupby([term]).count()
df = df.groupBy(['subreddit',term]).agg(f.sum('tf').alias('tf'))
df = _calc_tfidf(df, term_colname, tf_family)
-
- return df
+ df = df.repartition('subreddit')
+ dfwriter = df.write.sortBy("subreddit","tf")
+ return dfwriter
def select_topN_subreddits(topN, path="/gscratch/comdata/output/reddit_similarity/subreddits_by_num_comments_nonsfw.csv"):
rankdf = pd.read_csv(path)
return included_subreddits
+def repartition_tfidf(inpath="/gscratch/comdata/output/reddit_similarity/tfidf/comment_terms_100k.parquet",
+ outpath="/gscratch/comdata/output/reddit_similarity/tfidf/comment_terms_100k_repartitioned.parquet"):
+ spark = SparkSession.builder.getOrCreate()
+ df = spark.read.parquet(inpath)
+ df = df.repartition(400,'subreddit')
+ df.write.parquet(outpath,mode='overwrite')
+
+
+def repartition_tfidf_weekly(inpath="/gscratch/comdata/output/reddit_similarity/tfidf_weekly/comment_terms.parquet",
+ outpath="/gscratch/comdata/output/reddit_similarity/tfidf/comment_terms_repartitioned.parquet"):
+ spark = SparkSession.builder.getOrCreate()
+ df = spark.read.parquet(inpath)
+ df = df.repartition(400,'subreddit','week')
+ dfwriter = df.write.partitionBy("week")
+ dfwriter.parquet(outpath,mode='overwrite')
else:
include_subs = select_topN_subreddits(topN)
- df = func(df, include_subs, term_colname)
-
- df.write.parquet(outpath,mode='overwrite',compression='snappy')
+ dfwriter = func(df, include_subs, term_colname)
+ dfwriter.parquet(outpath,mode='overwrite',compression='snappy')
spark.stop()
def tfidf(inpath, outpath, topN, term_colname, exclude, included_subreddits):
from pyspark.sql import Window
import numpy as np
import pyarrow
+import pyarrow.dataset as ds
import pandas as pd
import fire
-from itertools import islice
+from itertools import islice, chain
from pathlib import Path
from similarities_helper import *
from multiprocessing import Pool, cpu_count
+from functools import partial
-def _week_similarities(tempdir, term_colname, week):
- print(f"loading matrix: {week}")
- mat = read_tfidf_matrix_weekly(tempdir.name, term_colname, week)
- print('computing similarities')
- sims = column_similarities(mat)
- del mat
- names = subreddit_names.loc[subreddit_names.week == week]
- sims = pd.DataFrame(sims.todense())
+def _week_similarities(week, simfunc, tfidf_path, term_colname, min_df, max_df, included_subreddits, topN, outdir:Path):
+ term = term_colname
+ term_id = term + '_id'
+ term_id_new = term + '_id_new'
+ print(f"loading matrix: {week}")
+ entries, subreddit_names = reindex_tfidf(infile = tfidf_path,
+ term_colname=term_colname,
+ min_df=min_df,
+ max_df=max_df,
+ included_subreddits=included_subreddits,
+ topN=topN,
+ week=week)
+ mat = csr_matrix((entries[tfidf_colname],(entries[term_id_new], entries.subreddit_id_new)))
+ print('computing similarities')
+ sims = column_similarities(mat)
+ del mat
+ sims = pd.DataFrame(sims.todense())
+ sims = sims.rename({i: sr for i, sr in enumerate(subreddit_names.subreddit.values)}, axis=1)
+ sims['_subreddit'] = names.subreddit.values
+ outfile = str(Path(outdir) / str(week))
+ write_weekly_similarities(outfile, sims, week, names)
- sims = sims.rename({i: sr for i, sr in enumerate(names.subreddit.values)}, axis=1)
- sims['_subreddit'] = names.subreddit.values
-
- write_weekly_similarities(outfile, sims, week, names)
+def pull_weeks(batch):
+ return set(batch.to_pandas()['week'])
#tfidf = spark.read.parquet('/gscratch/comdata/users/nathante/subreddit_tfidf_weekly.parquet')
-def cosine_similarities_weekly(tfidf_path, outfile, term_colname, min_df = None, included_subreddits = None, topN = 500):
- spark = SparkSession.builder.getOrCreate()
- conf = spark.sparkContext.getConf()
+def cosine_similarities_weekly(tfidf_path, outfile, term_colname, min_df = None, max_df=None, included_subreddits = None, topN = 500):
print(outfile)
- tfidf = spark.read.parquet(tfidf_path)
-
- if included_subreddits is None:
- included_subreddits = select_topN_subreddits(topN)
- else:
- included_subreddits = set(open(included_subreddits))
-
- print(f"computing weekly similarities for {len(included_subreddits)} subreddits")
-
- print("creating temporary parquet with matrix indicies")
- tempdir = prep_tfidf_entries_weekly(tfidf, term_colname, min_df, max_df=None, included_subreddits=included_subreddits)
-
- tfidf = spark.read.parquet(tempdir.name)
+ tfidf_ds = ds.dataset(tfidf_path)
+ tfidf_ds = tfidf_ds.to_table(columns=["week"])
+ batches = tfidf_ds.to_batches()
- # the ids can change each week.
- subreddit_names = tfidf.select(['subreddit','subreddit_id_new','week']).distinct().toPandas()
- subreddit_names = subreddit_names.sort_values("subreddit_id_new")
- subreddit_names['subreddit_id_new'] = subreddit_names['subreddit_id_new'] - 1
- spark.stop()
+ with Pool(cpu_count()) as pool:
+ weeks = set(chain( * pool.imap_unordered(pull_weeks,batches)))
- weeks = sorted(list(subreddit_names.week.drop_duplicates()))
+ weeks = sorted(weeks)
# do this step in parallel if we have the memory for it.
# should be doable with pool.map
- def week_similarities_helper(week):
- _week_similarities(tempdir, term_colname, week)
+ print(f"computing weekly similarities")
+ week_similarities_helper = partial(_week_similarities,simfunc=column_similarities, tfidf_path=tfidf_path, term_colname=term_colname, outdir=outfile, min_df=min_df,max_df=max_df,included_subreddits=included_subreddits,topN=topN)
with Pool(cpu_count()) as pool: # maybe it can be done with 40 cores on the huge machine?
list(pool.map(week_similarities_helper,weeks))
-def author_cosine_similarities_weekly(outfile, min_df=2 , included_subreddits=None, topN=500):
+def author_cosine_similarities_weekly(outfile, min_df=2, max_df=None, included_subreddits=None, topN=500):
return cosine_similarities_weekly('/gscratch/comdata/output/reddit_similarity/tfidf_weekly/comment_authors.parquet',
outfile,
'author',
min_df,
+ max_df,
included_subreddits,
topN)
-def term_cosine_similarities_weekly(outfile, min_df=None, included_subreddits=None, topN=500):
- return cosine_similarities_weekly('/gscratch/comdata/output/reddit_similarity/tfidf_weekly/comment_terms.parquet',
- outfile,
- 'term',
- min_df,
- included_subreddits,
- topN)
+def term_cosine_similarities_weekly(outfile, min_df=None, max_df=None, included_subreddits=None, topN=500):
+ return cosine_similarities_weekly('/gscratch/comdata/output/reddit_similarity/tfidf_weekly/comment_terms.parquet',
+ outfile,
+ 'term',
+ min_df,
+ max_df,
+ included_subreddits,
+ topN)
if __name__ == "__main__":
fire.Fire({'authors':author_cosine_similarities_weekly,