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k_means.py
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k_means.py
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from __future__ import print_function, division
import numpy as np
from mlfromscratch.utils import normalize, euclidean_distance, Plot
from mlfromscratch.unsupervised_learning import *
class KMeans():
"""A simple clustering method that forms k clusters by iteratively reassigning
samples to the closest centroids and after that moves the centroids to the center
of the new formed clusters.
Parameters:
-----------
k: int
The number of clusters the algorithm will form.
max_iterations: int
The number of iterations the algorithm will run for if it does
not converge before that.
"""
def __init__(self, k=2, max_iterations=500):
self.k = k
self.max_iterations = max_iterations
def _init_random_centroids(self, X):
""" Initialize the centroids as k random samples of X"""
n_samples, n_features = np.shape(X)
centroids = np.zeros((self.k, n_features))
for i in range(self.k):
centroid = X[np.random.choice(range(n_samples))]
centroids[i] = centroid
return centroids
def _closest_centroid(self, sample, centroids):
""" Return the index of the closest centroid to the sample """
closest_i = 0
closest_dist = float('inf')
for i, centroid in enumerate(centroids):
distance = euclidean_distance(sample, centroid)
if distance < closest_dist:
closest_i = i
closest_dist = distance
return closest_i
def _create_clusters(self, centroids, X):
""" Assign the samples to the closest centroids to create clusters """
n_samples = np.shape(X)[0]
clusters = [[] for _ in range(self.k)]
for sample_i, sample in enumerate(X):
centroid_i = self._closest_centroid(sample, centroids)
clusters[centroid_i].append(sample_i)
return clusters
def _calculate_centroids(self, clusters, X):
""" Calculate new centroids as the means of the samples in each cluster """
n_features = np.shape(X)[1]
centroids = np.zeros((self.k, n_features))
for i, cluster in enumerate(clusters):
centroid = np.mean(X[cluster], axis=0)
centroids[i] = centroid
return centroids
def _get_cluster_labels(self, clusters, X):
""" Classify samples as the index of their clusters """
# One prediction for each sample
y_pred = np.zeros(np.shape(X)[0])
for cluster_i, cluster in enumerate(clusters):
for sample_i in cluster:
y_pred[sample_i] = cluster_i
return y_pred
def predict(self, X):
""" Do K-Means clustering and return cluster indices """
# Initialize centroids as k random samples from X
centroids = self._init_random_centroids(X)
# Iterate until convergence or for max iterations
for _ in range(self.max_iterations):
# Assign samples to closest centroids (create clusters)
clusters = self._create_clusters(centroids, X)
# Save current centroids for convergence check
prev_centroids = centroids
# Calculate new centroids from the clusters
centroids = self._calculate_centroids(clusters, X)
# If no centroids have changed => convergence
diff = centroids - prev_centroids
if not diff.any():
break
return self._get_cluster_labels(clusters, X)