classification_evaluation.m.svn-base
来自「bayesian network structrue learning mat」· SVN-BASE 代码 · 共 33 行
SVN-BASE
33 行
function [ratio, ratiominus, ratioplus] = classification_evaluation(bnet, BDT, class)% Computes the classification ratio of a bnet structure on a test dataset BDT% [ratio ratiominus ratioplus] = classification_evaluation(bnet, BDT, class)% % [ratiominus rationplus] is the 95 percent confident interval.% results are in percentage [0 100]. [proba_post,engine] = inference(bnet, mat_to_bnt(BDT), class); [tmp yt] = max(proba_post, [],2); [N L] = size(BDT); count = length(find(BDT(class,:)==yt')); ratio = 100*count/L;[ratiominus rationplus] = confiance(ratio,L);%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%function [I, J] = confiance(t, N)% Compute the 95 percent confident interval%% see Y. Bennani and F. Bossaert, % Predictive neural networks for traffic disturbance detection in the telephone network% In Proceedings of IMACS-CESA 1996, Lille, France.Z = 1.96; % this value for the 95 percent confident intervalT = t/100;tmp = (Z*Z)/N;D = 1+tmp;N1 = T+tmp/2;tmp2 = T*(1-T)/N + tmp/(4*N);N2 = Z*sqrt(tmp2);I = 100*(N1-N2)/D;J = 100*(N1+N2)/D;
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