convert_to_pot.m

来自「基于matlab的bayes net toolbox,希望对大家能有些帮助」· M 代码 · 共 38 行

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function pot = convert_to_pot(CPD, pot_type, domain, evidence)% CONVERT_TO_POT Convert a tabular CPD to one or more potentials% pot = convert_to_pot(CPD, pot_type, domain, evidence)% This is the same as discrete_CPD/convert_to_pot,% except we didn't want to the kernel to inherit methods like sample_node etc.sz = CPD.sz;ns = zeros(1, max(domain));ns(domain) = sz;odom = domain(~isemptycell(evidence(domain)));T = convert_to_table(CPD, domain, evidence);switch pot_type case 'u',  pot = upot(domain, sz, T, 0*myones(sz));   case 'd',  ns(odom) = 1;  pot = dpot(domain, ns(domain), T);           case 'c',  % Since we want the output to be a Gaussian, the whole family must be observed.  % In other words, the potential is really just a constant.  p = T.p;  %p = prob_node(CPD, evidence(domain(end)), evidence(domain(1:end-1)));  ns(domain) = 0;  pot = cpot(domain, ns(domain), log(p));        case 'cg',  T = T(:);  ns(odom) = 1;  can = cell(1, length(T));  for i=1:length(T)    can{i} = cpot([], [], log(T(i)));  end  pot = cgpot(domain, [], ns, can);   end

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