Trying to train a k-means clustering algorithm
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    Josh Hershman
 il 2 Apr 2018
  
    
    
    
    
    Commentato: Josh Hershman
 il 3 Apr 2018
            Hello, I'm trying to follow  this example to training a k-means clustering algorithm for a data set of my own. My attached data file is a 73x2 double. I am running into trouble with these specific lines in the example:
x1 = min(X(:,1)):0.01:max(X(:,1));
x2 = min(X(:,2)):0.01:max(X(:,2));
[x1G,x2G] = meshgrid(x1,x2);
XGrid = [x1G(:),x2G(:)]; % Defines a fine grid on the plot
Specifically, I keep getting errors that the arrays I am trying to create exceed the maximum array size preference. I'm not really sure how to manipulate the arguments for x1 and x2 such that they properly fit my data and don't give extremely large matrices. The meshgrid command especially is giving me trouble, as I get the error : Error using repmat Requested 536389556x21511164 (85967508.8GB) array exceeds maximum array size preference.
Any help would be greatly appreciated!
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  Von Duesenberg
      
 il 2 Apr 2018
        
      Modificato: Von Duesenberg
      
 il 3 Apr 2018
  
      Your numbers are much much bigger than those of the original example. So you should increase the step size between your min and max value before you create the grid. For example:
x1 = min(X(:,1)):10e7:max(X(:,1));
x2 = min(X(:,2)):10e7:max(X(:,2));
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