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runkMeans.m
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runkMeans.m
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function [centroids, idx] = runkMeans(X, initial_centroids, ...
max_iters, plot_progress)
%RUNKMEANS runs the K-Means algorithm on data matrix X, where each row of X
%is a single example
% [centroids, idx] = RUNKMEANS(X, initial_centroids, max_iters, ...
% plot_progress) runs the K-Means algorithm on data matrix X, where each
% row of X is a single example. It uses initial_centroids used as the
% initial centroids. max_iters specifies the total number of interactions
% of K-Means to execute. plot_progress is a true/false flag that
% indicates if the function should also plot its progress as the
% learning happens. This is set to false by default. runkMeans returns
% centroids, a Kxn matrix of the computed centroids and idx, a m x 1
% vector of centroid assignments (i.e. each entry in range [1..K])
%
% Set default value for plot progress
if ~exist('plot_progress', 'var') || isempty(plot_progress)
plot_progress = false;
end
% Plot the data if we are plotting progress
if plot_progress
figure;
hold on;
end
% Initialize values
[m n] = size(X);
K = size(initial_centroids, 1);
centroids = initial_centroids;
previous_centroids = centroids;
idx = zeros(m, 1);
% Run K-Means
for i=1:max_iters
% Output progress
fprintf('K-Means iteration %d/%d...\n', i, max_iters);
if exist('OCTAVE_VERSION')
fflush(stdout);
end
% For each example in X, assign it to the closest centroid
idx = findClosestCentroids(X, centroids);
% Optionally, plot progress here
if plot_progress
plotProgresskMeans(X, centroids, previous_centroids, idx, K, i);
previous_centroids = centroids;
fprintf('Press enter to continue.\n');
pause;
end
% Given the memberships, compute new centroids
centroids = computeCentroids(X, idx, K);
end
% Hold off if we are plotting progress
if plot_progress
hold off;
end
end