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function Classify_Scalars_LASSO_MatchSubjs(InData,TITLE,MATCHTOEEG,vars,Xval)
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Big_A=InData(InData(:,1)==1,vars) ;
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Big_B=InData(InData(:,1)~=1,vars) ;
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Big_B=Big_B(MATCHTOEEG',:);
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for rep = 1:28
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AllData = cat(1,Big_A,Big_B);
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GROUPS = [ones(1,size(Big_A,1)),zeros(1,size(Big_B,1))];
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Size_Per_Set = size(AllData,1) .* .5;
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% Cross Validate
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testsize = 1;
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trainsize = Size_Per_Set-testsize;
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% get shuffled trials for train set
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TrainBool = ones(1,Size_Per_Set); TrainBool(rep)=0;
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% get shuffled trials for validate set
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Test1Bool = zeros(1,Size_Per_Set); Test1Bool(rep)=1;
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trainsize = Size_Per_Set-2*testsize;
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% get shuffled trials for train set
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TrainBool = ones(1,Size_Per_Set); TrainBool(rep)=0;
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% get shuffled trials for validate set
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Test1Bool = zeros(1,Size_Per_Set); Test1Bool(rep)=1;
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% get shuffled trials for test set
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Test2Bool = zeros(1,Size_Per_Set); if rep==28, Test2Bool(1)=1; else Test2Bool(rep+1)=1; end
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% same for standards and targets
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TrainBool = [TrainBool TrainBool];
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Test1Bool = [Test1Bool Test1Bool];
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Test2Bool = [Test2Bool Test2Bool];
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% Classify ****** Targets ******
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% training set
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x_train = AllData(TrainBool==1,:);
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% normalize!
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x_mean = mean(x_train); x_std = std(x_train);
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x_train_norm = (x_train - repmat(x_mean,size(x_train,1),1)); % mean -normalize
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x_train_norm = x_train_norm./repmat(x_std,size(x_train,1),1);
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y_train = GROUPS(TrainBool==1);
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% validate set
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xtstset1 = AllData(Test1Bool == 1,:);
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% normalize to train set
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xtstset1_norm = (xtstset1-repmat(x_mean,size(xtstset1,1),1));
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xtstset1_norm = xtstset1_norm./ repmat(x_std,size(xtstset1,1),1); % normalize to trn data
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y_tstset1 = GROUPS(Test1Bool==1);
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% test set
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xtstset2 = AllData(Test2Bool == 1,:);
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% normalize to train set
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xtstset2_norm = (xtstset2-repmat(x_mean,size(xtstset2,1),1));
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xtstset2_norm = xtstset2_norm./ repmat(x_std,size(xtstset2,1),1); % normalize to trn data
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y_tstset2 = GROUPS(Test2Bool==1);
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% store normalizing constants. Important to normalize to that when applying
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% weights to a different data set later.
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norm{1}(rep,:) = x_mean;
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norm{2}(rep,:) = x_std;
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x_train = x_train_norm;
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x_test1 = xtstset1_norm;
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x_test2 = xtstset2_norm;
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% ############# LASSO #############
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[B,stats] = lasso(x_train, y_train');
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predictor_train = logical((x_train * B >0) );
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IsTarget_train = repmat(y_train',1,size(B,2));
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% predict val
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predictor_tstset1 = logical((x_test1 * B >0) );
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IsTarget_tstset1 = repmat(y_tstset1',1,size(B,2));
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predictor_tstset2 = logical((x_test2 * B >0) );
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IsTarget_tstset2 = repmat(y_tstset2',1,size(B,2));
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% select regularization param that gets best generalization on
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% validation set. If many, go for sparsity.
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generalize = mean(predictor_tstset1==IsTarget_tstset1);
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[Test1Acc,tochoose] = max(generalize);
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tochoose = tochoose(1);
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% Get Training accuracy for that param
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TrainAcc = mean(IsTarget_train(:,tochoose)==predictor_train(:,tochoose));
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% Get test set accuracy for that param, unbiased
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Test2Acc = mean(IsTarget_tstset2(:,tochoose)==predictor_tstset2(:,tochoose));
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% Get separately for the two conditions
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targets = find(y_train == 1);
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TrainAcc1 = mean(IsTarget_train(targets,tochoose)==predictor_train(targets,tochoose));
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targets = find(y_tstset1 == 1);
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Test1Acc1 = mean(IsTarget_tstset1(targets,tochoose)==predictor_tstset1(targets,tochoose));
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targets = find(y_tstset2 == 1);
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Test2Acc1 = mean(IsTarget_tstset2(targets,tochoose)==predictor_tstset2(targets,tochoose));
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targets = find(y_train == 0);
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TrainAcc0 = mean(IsTarget_train(targets,tochoose)==predictor_train(targets,tochoose));
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targets = find(y_tstset1 == 0);
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Test1Acc0 = mean(IsTarget_tstset1(targets,tochoose)==predictor_tstset1(targets,tochoose));
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targets = find(y_tstset2 == 0);
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Test2Acc0 = mean(IsTarget_tstset2(targets,tochoose)==predictor_tstset2(targets,tochoose));
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% store
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LASSO_Probability_Train(rep,:) = [TrainAcc TrainAcc1 TrainAcc0];
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LASSO_Probability_Tst1(rep,:) = [Test1Acc Test1Acc1 Test1Acc0];
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LASSO_Probability_Tst2(rep,:) = [Test2Acc Test2Acc1 Test2Acc0];
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LASSO_Betas(rep,:)=B(:,tochoose)';
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clearvars -except norm LASSO_Probability_Train LASSO_Probability_Tst1 LASSO_Probability_Tst2 LASSO_Betas rep Big_A Big_B InData Xval TITLE iterations
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end
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save(['LASSO_',TITLE,'_',Xval,'_iter28.mat'],'LASSO_Probability_Train','LASSO_Probability_Tst1','LASSO_Probability_Tst2','LASSO_Betas');
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