Mercurial > hg > camir-aes2014
view toolboxes/FullBNT-1.0.7/bnt/examples/static/mixexp3.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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% Fit a piece-wise linear regression model. % Here is the model % % X \ % | | % Q | % | / % Y % % where all arcs point down. % We condition everything on X, so X is a root node. Q is a softmax, and Y is a linear Gaussian. % Q is hidden, X and Y are observed. X = 1; Q = 2; Y = 3; dag = zeros(3,3); dag(X,[Q Y]) = 1; dag(Q,Y) = 1; ns = [1 2 1]; % make X and Y scalars, and have 2 experts dnodes = [2]; onodes = [1 3]; bnet = mk_bnet(dag, ns, 'discrete', dnodes, 'observed', onodes); IRLS_iter = 10; clamped = 0; bnet.CPD{1} = root_CPD(bnet, 1); % start with good initial params w = [-5 5]; % w(:,i) is the normal vector to the i'th decisions boundary b = [0 0]; % b(i) is the offset (bias) to the i'th decisions boundary mu = [0 0]; sigma = 1; Sigma = repmat(sigma*eye(ns(Y)), [ns(Y) ns(Y) ns(Q)]); W = [-1 1]; W2 = reshape(W, [ns(Y) ns(X) ns(Q)]); bnet.CPD{2} = softmax_CPD(bnet, 2, w, b, clamped, IRLS_iter); bnet.CPD{3} = gaussian_CPD(bnet, 3, 'mean', mu, 'cov', Sigma, 'weights', W2); engine = jtree_inf_engine(bnet); evidence = cell(1,3); evidence{X} = 0.68; engine = enter_evidence(engine, evidence); m = marginal_nodes(engine, Y); m.mu