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myKMeans.py
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145 lines (129 loc) · 4.65 KB
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# 2021.05.10
# change inv_predict to inverse_perdict
# https://www.kdnuggets.com/2021/01/k-means-faster-lower-error-scikit-learn.html
# faster kmeans
# gpu is supported
# conda install -c conda-forge faiss-gpu
#
import faiss
import numpy as np
class fast_KMeans:
def __init__(self, n_clusters=8, n_init=10, max_iter=300, gpu=False, n_threads=10):
self.n_clusters = n_clusters
self.n_init = n_init
self.max_iter = max_iter
self.kmeans = None
self.cluster_centers_ = None
self.inertia_ = None
self.gpu = gpu
faiss.omp_set_num_threads(n_threads)
self.__version__ = faiss.__version__
def fit(self, X):
if self.gpu != False:
self.kmeans = faiss.Kmeans(d=X.shape[1],
k=self.n_clusters,
niter=self.max_iter,
nredo=self.n_init,
gpu=self.gpu,
)
else:
self.kmeans = faiss.Kmeans(d=X.shape[1],
k=self.n_clusters,
niter=self.max_iter,
nredo=self.n_init,
)
X = np.ascontiguousarray(X.astype('float32'))
self.kmeans.train(X)
self.cluster_centers_ = self.kmeans.centroids
self.inertia_ = self.kmeans.obj[-1]
return self
def predict(self, X):
X = np.ascontiguousarray(X.astype('float32'))
return self.kmeans.index.search(X.astype(np.float32), 1)[1]
def inverse_predict(self, label):
return self.cluster_centers[label]
# @yifan
import numpy as np
import copy
import sklearn
from sklearn import cluster
from sklearn.metrics.pairwise import euclidean_distances
def sort_by_eng(Cent):
eng = np.sum(np.square(Cent), axis=1)
idx = np.argsort(eng)
mp, imp = {}, {}
for i in range(len(idx)):
assert (i not in mp.keys()), "Err"
assert (idx[i] not in imp.keys()), 'err'
mp[i] = idx[i]
imp[idx[i]] = i
return mp, imp
class Mapping():
def __init__(self, Cent):
self.map, self.inv_map = sort_by_eng(Cent)
self.version = '2021.05.14'
def transform(self, label):
S = label.shape
label = label.reshape(-1)
for i in range(len(label)):
label[i] = self.map[label[i]]
return label.reshape(S)
def inverse_transform(self, l):
S = l.shape
label = copy.deepcopy(l).reshape(-1)
for i in range(len(label)):
label[i] = self.inv_map[label[i]]
return label.reshape(S)
class myKMeans():
def __init__(self, n_clusters=-1, trunc=-1, fast=True, gpu=False, n_threads=10, sort=False, saveObj=False):
if fast == True:
self.KM = fast_KMeans( n_clusters=n_clusters, n_init=11 , gpu=gpu, n_threads=n_threads)
self.version_ = self.KM.__version__
else:
self.KM = cluster.KMeans( n_clusters=n_clusters, n_init=11 )
self.version_ = sklearn. __version__
self.n_clusters = n_clusters
self.cluster_centers_ = []
self.trunc = trunc
self.sort = sort
self.saveObj = saveObj
self.version = '2021.05.31'
def truncate(self, X):
if self.trunc != -1:
X[:, self.trunc:] *= 0
return X
def fit(self, X):
X = X.reshape( -1, X.shape[-1] )
self.truncate(X)
self.KM.fit( X )
if self.sort == True:
self.MP = Mapping(np.array( self.KM.cluster_centers_ ))
self.cluster_centers_ = copy.deepcopy(np.array( self.KM.cluster_centers_ ))
if self.saveObj == False:
self.KM = None
return self
def Cpredict(self, X):
index = faiss.IndexFlatL2(self.cluster_centers_.shape[1])
index.add(self.cluster_centers_)
D, I = index.search(X, 1)
return I
def predict(self, X):
S = (list)(X.shape)
S[-1] = -1
X = X.reshape(-1, X.shape[-1])
if self.saveObj == True:
idx = self.KM.predict(X)
else:
idx = self.Cpredict(X)
if self.sort == True:
idx = self.MP.transform(idx)
return idx.reshape(S)
def inverse_predict(self, idx):
idx = idx.astype('int32')
S = (list)(idx.shape)
S[-1] = -1
idx = idx.reshape(-1,)
if self.sort == True:
idx = self.MP.inverse_transform(idx)
X = self.cluster_centers_[idx]
return X.reshape(S)