Mercurial > hg > camir-aes2014
view reproduce_AES53rd/rerun_figure3.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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% --- % This script trains similarity measures and evaluates the % impact of the number of hidden states as displayed in figure 3 of % % Feature Preprocessing with RBMs for Music Similarity Learning % Son N. Tran, Daniel Wolff, Tillman Weyde, Artur Garcez, AES53rd % conference % % The output is printed in the console and plotted afterwards % % please note that the RBM training is a probabilistic process, and % thus the papers' results can only be reproduced approximately with % large numbers iterations of this script, and selection of RBMs according to % their training set performance. % --- % this version reproduces the figure approximately using precomputed RBM [test(1), train(1)] = rbm_fig3('rbm_h30'); [test(2), train(2)] = rbm_fig3('rbm_h50'); [test(3), train(3)] = rbm_fig3('rbm_h100'); [test(4), train(4)] = rbm_fig3('rbm_h500'); [test(5), train(5)] = rbm_fig3('rbm_h1000'); % optionally, in order to test new RBMs, use the code below % [test(1), train(1)] = rbm_fig3(30); % [test(2), train(2)] = rbm_fig3(50); % [test(3), train(3)] = rbm_fig3(100); % [test(4), train(4)] = rbm_fig3(500); % [test(5), train(5)] = rbm_fig3(1000); hidNum = [30 50 100 500 1000]; hFig = figure; set(hFig,'Units','centimeters'); set(hFig, 'Position', [10 10 10 6]); plot(hidNum,train*100,'--rx'); hold on plot(hidNum,test*100,'-bo'); lg = legend('Training','Test'); set(lg,'Location','SouthEast'); title ('Figure 4: GRADIENT results for different hidNum');