kalman1.m

来自「基于matlab的bayes net toolbox,希望对大家能有些帮助」· M 代码 · 共 67 行

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% Make a linear dynamical system%   X1 -> X2%   |     | %   v     v%   Y1    Y2 intra = zeros(2);intra(1,2) = 1;inter = zeros(2);inter(1,1) = 1;n = 2;X = 2; % size of hidden stateY = 2; % size of observable statens = [X Y];bnet = mk_dbn(intra, inter, ns, 'discrete', [], 'observed', 2);x0 = rand(X,1);V0 = eye(X);C0 = rand(Y,X);R0 = eye(Y);A0 = rand(X,X);Q0 = eye(X);bnet.CPD{1} = gaussian_CPD(bnet, 1, 'mean', x0, 'cov', V0, 'cov_prior_weight', 0);bnet.CPD{2} = gaussian_CPD(bnet, 2, 'mean', zeros(Y,1), 'cov', R0, 'weights', C0, ...			   'clamp_mean', 1, 'cov_prior_weight', 0);bnet.CPD{3} = gaussian_CPD(bnet, 3, 'mean', zeros(X,1), 'cov', Q0, 'weights', A0, ...			   'clamp_mean', 1, 'cov_prior_weight', 0);T = 5; % fixed length sequencesclear engine;engine{1} = kalman_inf_engine(bnet);engine{2} = jtree_unrolled_dbn_inf_engine(bnet, T);engine{3} = jtree_dbn_inf_engine(bnet);engine{end+1} = smoother_engine(jtree_2TBN_inf_engine(bnet));N = length(engine);inf_time = cmp_inference_dbn(bnet, engine, T);ncases = 2;max_iter = 2;[learning_time, CPD, LL, cases] = cmp_learning_dbn(bnet, engine, T, 'ncases', ncases, 'max_iter', max_iter);% Compare to KF toolboxdata = zeros(Y, T, ncases);for i=1:ncases  data(:,:,i) = cell2num(cases{i}(onodes, :));end   [A2, C2, Q2, R2, x2, V2, LL2trace] =  learn_kalman(data, A0, C0, Q0, R0, x0, V0, max_iter);e = 1;assert(approxeq(x2, CPD{e,1}.mean))assert(approxeq(V2, CPD{e,1}.cov))assert(approxeq(C2, CPD{e,2}.weights))assert(approxeq(R2, CPD{e,2}.cov));assert(approxeq(A2, CPD{e,3}.weights))assert(approxeq(Q2, CPD{e,3}.cov));assert(approxeq(LL2trace, LL{1}))

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