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1 function [engine, loglik] = enter_evidence(engine, evidence, varargin)
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2 % ENTER_EVIDENCE Add the specified evidence to the network (kalman)
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3 % [engine, loglik] = enter_evidence(engine, evidence, ...)
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4 %
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5 % evidence{i,t} = [] if if X(i,t) is hidden, and otherwise contains its observed value (scalar or column vector)
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6 %
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7 % The following optional arguments can be specified in the form of name/value pairs:
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8 % [default value in brackets]
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9 %
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10 % maximize - if 1, does max-product (same as sum-product for Gaussians!), else sum-product [0]
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11 % filter - if 1, do filtering, else smoothing [0]
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12 %
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13 % e.g., engine = enter_evidence(engine, ev, 'maximize', 1)
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14
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15 maximize = 0;
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16 filter = 0;
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17
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18 % parse optional params
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19 args = varargin;
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20 nargs = length(args);
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21 if nargs > 0
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22 for i=1:2:nargs
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23 switch args{i},
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24 case 'maximize', maximize = args{i+1};
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25 case 'filter', filter = args{i+1};
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26 otherwise,
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27 error(['invalid argument name ' args{i}]);
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28 end
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29 end
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30 end
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31
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32 assert(~maximize);
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33
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34 bnet = bnet_from_engine(engine);
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35 n = length(bnet.intra);
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36 onodes = bnet.observed;
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37 hnodes = mysetdiff(1:n, onodes);
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38 T = size(evidence, 2);
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39 ns = bnet.node_sizes;
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40 O = sum(ns(onodes));
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41 data = reshape(cat(1, evidence{onodes,:}), [O T]);
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42
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43 A = engine.trans_mat;
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44 C = engine.obs_mat;
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45 Q = engine.trans_cov;
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46 R = engine.obs_cov;
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47 init_x = engine.init_state;
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48 init_V = engine.init_cov;
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49
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50 if filter
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51 [x, V, VV, loglik] = kalman_filter(data, A, C, Q, R, init_x, init_V);
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52 else
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53 [x, V, VV, loglik] = kalman_smoother(data, A, C, Q, R, init_x, init_V);
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54 end
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55
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56
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57 % Wrap the posterior inside a potential, so it can be marginalized easily
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58 engine.one_slice_marginal = cell(1,T);
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59 engine.two_slice_marginal = cell(1,T);
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60 ns(onodes) = 0;
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61 ns(onodes+n) = 0;
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62 ss = length(bnet.intra);
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63 for t=1:T
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64 dom = (1:n);
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65 engine.one_slice_marginal{t} = mpot(dom+(t-1)*ss, ns(dom), 1, x(:,t), V(:,:,t));
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66 end
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67 % for t=1:T-1
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68 % dom = (1:(2*n));
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69 % mu = [x(:,t); x(:,t)];
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70 % Sigma = [V(:,:,t) VV(:,:,t+1)';
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71 % VV(:,:,t+1) V(:,:,t+1)];
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72 % engine.two_slice_marginal{t} = mpot(dom+(t-1)*ss, ns(dom), 1, mu, Sigma);
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73 % end
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74 for t=2:T
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75 %dom = (1:(2*n));
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76 current_slice = hnodes;
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77 next_slice = hnodes + ss;
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78 dom = [current_slice next_slice];
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79 mu = [x(:,t-1); x(:,t)];
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80 Sigma = [V(:,:,t-1) VV(:,:,t)';
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81 VV(:,:,t) V(:,:,t)];
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82 engine.two_slice_marginal{t-1} = mpot(dom+(t-2)*ss, ns(dom), 1, mu, Sigma);
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83 end
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