]> code.communitydata.science - cdsc_reddit.git/blobdiff - clustering/hdbscan_clustering.py
Merge remote-tracking branch 'origin/excise_reindex' into temp
[cdsc_reddit.git] / clustering / hdbscan_clustering.py
index 4f4e0d6f2c4f18b47d3d96ac0991fbc72fdb6aef..f0ee7038c75bab4df7960f5d49b68518aac85345 100644 (file)
@@ -1,10 +1,11 @@
 from clustering_base import sim_to_dist, process_clustering_result, clustering_result, read_similarity_mat
+from clustering_base import lsi_result_mixin, lsi_mixin, clustering_job, grid_sweep, lsi_grid_sweep
 from dataclasses import dataclass
 import hdbscan
 from sklearn.neighbors import NearestNeighbors
 import plotnine as pn
 import numpy as np
-from itertools import product, starmap
+from itertools import product, starmap, chain
 import pandas as pd
 from sklearn.metrics import silhouette_score, silhouette_samples
 from pathlib import Path
@@ -13,27 +14,88 @@ 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"
+    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_10k_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'
+    gs = hdbscan_lsi_grid_sweep(inpath, "all", outpath, min_cluster_sizes, min_samples, cluster_selection_epsilons, cluster_selection_methods)
+    gs.run(20)
+    gs.save("test_hdbscan/lsi_sweep.csv")
+    # job1 = hdbscan_lsi_job(infile=inpath, outpath=outpath, name="test", lsi_dims=500, min_cluster_size=2, min_samples=1,cluster_selection_epsilon=0,cluster_selection_method='eom')
+    # job1.run()
+    # print(job1.get_info())
 
-    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)
+    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)
 
+class hdbscan_lsi_grid_sweep(lsi_grid_sweep):
+    def __init__(self,
+                 inpath,
+                 lsi_dims,
+                 outpath,
+                 min_cluster_sizes,
+                 min_samples,
+                 cluster_selection_epsilons,
+                 cluster_selection_methods
+                 ):
+
+        super().__init__(hdbscan_lsi_job,
+                         _hdbscan_lsi_grid_sweep,
+                         inpath,
+                         lsi_dims,
+                         outpath,
+                         min_cluster_sizes,
+                         min_samples,
+                         cluster_selection_epsilons,
+                         cluster_selection_methods)
+        
+class hdbscan_grid_sweep(grid_sweep):
+    def __init__(self,
+                 inpath,
+                 outpath,
+                 *args,
+                 **kwargs):
+
+        super().__init__(hdbscan_job, inpath, outpath, self.namer, *args, **kwargs)
+
+    def namer(self,
+              min_cluster_size,
+              min_samples,
+              cluster_selection_epsilon,
+              cluster_selection_method):
+        return f"mcs-{min_cluster_size}_ms-{min_samples}_cse-{cluster_selection_epsilon}_csm-{cluster_selection_method}"
+
+
+class _hdbscan_lsi_grid_sweep(grid_sweep):
+    def __init__(self,
+                 inpath,
+                 outpath,
+                 lsi_dim,
+                 *args,
+                 **kwargs):
+
+        self.lsi_dim = lsi_dim
+        self.jobtype = hdbscan_lsi_job
+        super().__init__(self.jobtype, inpath, outpath, self.namer, self.lsi_dim, *args, **kwargs)
+
+
+    def namer(self, *args, **kwargs):
+        s = hdbscan_grid_sweep.namer(self, *args[1:], **kwargs)
+        s += f"_lsi-{self.lsi_dim}"
+        return s
 
 @dataclass
 class hdbscan_clustering_result(clustering_result):
@@ -41,107 +103,166 @@ class hdbscan_clustering_result(clustering_result):
     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)
+
+@dataclass
+class hdbscan_clustering_result_lsi(hdbscan_clustering_result, lsi_result_mixin):
+    pass 
+
+class hdbscan_job(clustering_job):
+    def __init__(self, infile, outpath, name, min_cluster_size=2, min_samples=1, cluster_selection_epsilon=0, cluster_selection_method='eom'):
+        super().__init__(infile,
+                         outpath,
+                         name,
+                         call=hdbscan_job._hdbscan_clustering,
+                         min_cluster_size=min_cluster_size,
+                         min_samples=min_samples,
+                         cluster_selection_epsilon=cluster_selection_epsilon,
+                         cluster_selection_method=cluster_selection_method
+                         )
+
+        self.min_cluster_size = min_cluster_size
+        self.min_samples = min_samples
+        self.cluster_selection_epsilon = cluster_selection_epsilon
+        self.cluster_selection_method = cluster_selection_method
+#        self.mat = 1 - self.mat
+
+    def _hdbscan_clustering(mat, *args, **kwargs):
+        print(f"running hdbscan clustering. args:{args}. kwargs:{kwargs}")
+        print(mat)
+        clusterer = hdbscan.HDBSCAN(metric='precomputed',
+                                    core_dist_n_jobs=cpu_count(),
+                                    *args,
+                                    **kwargs,
+                                    )
     
-    if lsi_dimensions == 'all':
-        lsi_paths = list(inpath.glob("*"))
+        clustering = clusterer.fit(mat.astype('double'))
+    
+        return(clustering)
+
+    def get_info(self):
+        result = super().get_info()
+        self.result = hdbscan_clustering_result(**result.__dict__,
+                                                min_cluster_size=self.min_cluster_size,
+                                                min_samples=self.min_samples,
+                                                cluster_selection_epsilon=self.cluster_selection_epsilon,
+                                                cluster_selection_method=self.cluster_selection_method)
+        return self.result
+
+class hdbscan_lsi_job(hdbscan_job, lsi_mixin):
+    def __init__(self, infile, outpath, name, lsi_dims, *args, **kwargs):
+        super().__init__(
+                         infile,
+                         outpath,
+                         name,
+                         *args,
+                         **kwargs)
+        super().set_lsi_dims(lsi_dims)
+
+    def get_info(self):
+        partial_result = super().get_info()
+        self.result = hdbscan_clustering_result_lsi(**partial_result.__dict__,
+                                                    lsi_dimensions=self.lsi_dims)
+        return self.result
+
+# 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 is None:
+#         lsi_paths = [inpath]
+#     elif lsi_dimensions == 'all':
+#         lsi_paths = list(inpath.glob("*"))
 
-    else:
-        lsi_paths = [inpath / (dim + '.feather') for dim in lsi_dimensions]
+    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))
+#     if lsi_dimensions is not None:
+#         lsi_nums = [p.stem for p in lsi_paths]
+#     else:
+#         lsi_nums = [None]
+#     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))
+    # 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)]
+    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)
+    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 = pd.DataFrame(mods)
+    if outfile is None:
+        outfile = outpath / "selection_data.csv"
 
-    res.to_csv(outfile)
+    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_))
-                                   )
+# 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,
+#                                        silhouette_samples=silsampout,
+#                                        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,
-                                )
+    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'))
+    clustering = clusterer.fit(mat.astype('double'))
     
-    return(clustering)
+    return(clustering)
 
 def KNN_distances_plot(mat,outname,k=2):
     nbrs = NearestNeighbors(n_neighbors=k,algorithm='auto',metric='precomputed').fit(mat)
@@ -172,4 +293,10 @@ def make_KNN_plots():
     KNN_distances_plot(mat,k=2,outname='authors-tf_knn_dist2.png')
 
 if __name__ == "__main__":
-    fire.Fire(select_hdbscan_clustering)
+    fire.Fire{'grid_sweep':hdbscan_grid_sweep,
+              'grid_sweep_lsi':hdbscan_lsi_grid_sweep
+              'cluster':hdbscan_job,
+              'cluster_lsi':hdbscan_lsi_job}
+    
+#    test_select_hdbscan_clustering()
+    #fire.Fire(select_hdbscan_clustering)  

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