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view toolboxes/FullBNT-1.0.7/bnt/examples/static/Zoubin/mfademo.m @ 0:e9a9cd732c1e tip
first hg version after svn
author | wolffd |
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date | Tue, 10 Feb 2015 15:05:51 +0000 |
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echo on; clc; % This is a very basic demo of the mixture of factor analyzer software % written in Matlab by Zoubin Ghahramani % Dept of Computer Science % University of Toronto pause; % Hit any key to continue % To demonstrate the software we generate a sample data set % from a mixture of two Gaussians pause; % Hit any key to continue X1=randn(300,5); % zero mean 5 dim Gaussian data X2=randn(200,5)+2; % 5 dim Gaussian data with mean [1 1 1 1 1] X=[X1;X2]; % total 500 data points from mixture % Fitting the model is very easy. For example to fit a mixture of 2 % factor analyzers with three factors each... pause; % Hit any key to continue [Lh,Ph,Mu,Pi,LL]=mfa(X,2,3); % Lh, Ph, Mu, and Pi are the factor loadings, observervation % variances, observation means for each mixture, and mixing % proportions. LL is the vector of log likelihoods (the learning % curve). For more information type: help mfa % to plot the learning curve (log likelihood at each step of EM)... pause; % Hit any key to continue plot(LL); % you get a more informative picture of convergence by looking at the % log of the first difference of the log likelihoods... pause; % Hit any key to continue semilogy(diff(LL)); % you can look at some of the parameters of the fitted model... pause; % Hit any key to continue Mu Pi % ...to see whether they make any sense given that me know how the % data was generated. % you can also evaluate the log likelihood of another data set under % the model we have just fitted using the mfa_cl (for Calculate % Likelihood) function. For example, here we generate a test from the % same distribution. X1=randn(300,5); X2=randn(200,5)+2; Xtest=[X1; X2]; pause; % Hit any key to continue mfa_cl(Xtest,Lh,Ph,Mu,Pi) % we should expect the log likelihood of the test set to be lower than % that of the training set. % finally, we can also fit a regular factor analyzer using the ffa % function (Fast Factor Analysis)... pause; % Hit any key to continue [L,Ph,LL]=ffa(X,3);