[90] | 1 | %LASSOC |
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| 2 | % |
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| 3 | % W = LASSOC(X, LAMBDA) |
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| 4 | % |
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| 5 | % Train the LASSO classifier on dataset X. LAMBDA is the regularization |
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| 6 | % parameter. |
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| 7 | |
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[5] | 8 | function w = lassoc(x, lambda) |
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| 9 | |
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| 10 | mustScale=0; |
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| 11 | |
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| 12 | if (nargin < 2) |
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| 13 | %prwarning(3,'Lambda set to one'); |
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| 14 | lambda = 1; |
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| 15 | end |
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| 16 | if (nargin < 1) | (isempty(x)) |
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[90] | 17 | w = prmapping(mfilename,{lambda}); |
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[5] | 18 | w = setname(w,'LASSO classifier'); |
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| 19 | return |
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| 20 | end |
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| 21 | |
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| 22 | if ~ismapping(lambda) % train the mapping |
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| 23 | |
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| 24 | % Unpack the dataset. |
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| 25 | islabtype(x,'crisp'); |
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| 26 | %isvaldset(x,1,2); % at least 1 object per class, 2 classes |
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| 27 | [n,k,c] = getsize(x); |
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| 28 | |
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| 29 | % Is this necessary?? |
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| 30 | if mustScale |
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| 31 | wsc = scalem(x,'variance'); |
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| 32 | x.data = x.data*wsc; |
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| 33 | end |
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| 34 | |
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| 35 | if c ~= 2 % two-class classifier: |
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| 36 | error('Only a two-class classifier is implemented'); |
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| 37 | end |
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| 38 | |
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[99] | 39 | if exist('lasso')==3 % we have a own compiled mex code |
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| 40 | beta=-lasso(+x,3-2*getnlab(x),lambda); |
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| 41 | else % hope that we have a modern Matlab with stats. toolbox: |
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| 42 | if ~exist('lasso') |
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| 43 | error('Cannot find the function lasso.m.'); |
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| 44 | end |
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| 45 | beta=-lasso(+x,3-2*getnlab(x),'Lambda',lambda); |
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| 46 | end |
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[5] | 47 | |
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| 48 | % now find out how sparse the result is: |
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| 49 | nr = sum(abs(beta)>1.0e-8); |
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| 50 | |
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| 51 | % and store the results: |
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| 52 | if mustScale |
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| 53 | W.wsc = wsc; |
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| 54 | end |
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| 55 | |
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| 56 | W.beta = beta; % the ultimate weights |
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| 57 | W.nr = nr; |
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[90] | 58 | w = prmapping(mfilename,'trained',W,getlablist(x),size(x,2),c); |
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[5] | 59 | w = setname(w,'LASSO classifier'); |
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| 60 | |
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| 61 | else |
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| 62 | % Evaluate the classifier on new data: |
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| 63 | W = getdata(lambda); |
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| 64 | n = size(x,1); |
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| 65 | |
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| 66 | % scaling and linear classifier: |
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| 67 | if mustScale |
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| 68 | x = x*W.wsc; |
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| 69 | end |
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| 70 | out = x*W.beta; |
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| 71 | |
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| 72 | % and put it nicely in a prtools dataset: |
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| 73 | w = setdat(x,sigm([-out out]),lambda); |
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| 74 | |
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| 75 | end |
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| 76 | |
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| 77 | return |
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