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I am using the VLFeat library in Matlab for some image analysis work. I want to use their Pegasos SVM implementation because of some of the kernels they have implemented, specifically, the Chi2 kernel.

However, I'm finding the documentation leaving me confused. Following this tutorial I have a model w and a bias b, but how can I use that to classify my test data?

My starting data is like so (dimensions)..

size(train_data) = 
    200    210

size(train_labels) =
    1      210

size(test_data) =
    200    140

size(test_labels) =
    1      140

I can build a dataset with..

dataset = vl_maketrainingset(train_data, int8(train_labels))

giving me..

dataset = 
      data: [200x210 double]
    labels: [1x210 int8]

and then I can build the model..

[w b info] = vl_svmpegasos(dataset,0.01,'MaxIterations',5000);

w is my model ('w'eights?) is a vector size of size 200 x 1 with values ranging from 0 to 1.

I believe I need to multiply this vector by my test_data to get scores of some sort, but I'm not sure what the meaning of those scores would be.

Any direction is much appreciated.

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1 Answer 1

Did you look at their Caltech 101 example code? It uses pegasos and gives a nice evaluation of the results.

Here is the relevant code snippet:

% --------------------------------------------------------------------
%                                                            Train SVM
% --------------------------------------------------------------------

lambda = 1 / (conf.svm.C *  length(selTrain)) ;
w = [] ;
for ci = 1:length(classes)
  perm = randperm(length(selTrain)) ;
  fprintf('Training model for class %s\n', classes{ci}) ;
  y = 2 * (imageClass(selTrain) == ci) - 1 ;
  data = vl_maketrainingset(psix(:,selTrain(perm)), int8(y(perm))) ;
  [w(:,ci) b(ci)] = vl_svmpegasos(data, lambda, ...
                                  'MaxIterations', 50/lambda, ...
                                  'BiasMultiplier', conf.svm.biasMultiplier) ;

  model.b = conf.svm.biasMultiplier * b ;
  model.w = w ;

% --------------------------------------------------------------------
%                                                Test SVM and evaluate
% --------------------------------------------------------------------

% Estimate the class of the test images
scores = model.w' * psix + model.b' * ones(1,size(psix,2)) ;
[drop, imageEstClass] = max(scores, [], 1) ;

% Compute the confusion matrix
idx = sub2ind([length(classes), length(classes)], ...
              imageClass(selTest), imageEstClass(selTest)) ;
confus = zeros(length(classes)) ;
confus = vl_binsum(confus, ones(size(idx)), idx) ;
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