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I know that LIBSVM only allows one-vs-one classification when it comes to multi-class SVM. However, I would like to tweak it a bit to perform one-against-all classification. I have tried to perform one-against-all below. Is this the correct approach?

The code:

TrainLabel;TrainVec;TestVec;TestLaBel;
u=unique(TrainLabel);
N=length(u);
if(N>2)
    itr=1;
    classes=0;
    while((classes~=1)&&(itr<=length(u)))
        c1=(TrainLabel==u(itr));
        newClass=c1;
        model = svmtrain(TrainLabel, TrainVec, '-c 1 -g 0.00154'); 
        [predict_label, accuracy, dec_values] = svmpredict(TestLabel, TestVec, model);
        itr=itr+1;
    end
itr=itr-1;
end

I might have done some mistakes. I would like to hear some feedback. Thanks.

Second Part: As grapeot said : I need to do Sum-pooling (or voting as a simplified solution) to come up with the final answer. I am not sure how to do it. I need some help on it; I saw the python file but still not very sure. I need some help.

2
  • What's the question exactly? You are asking how to perform one-vs-all classification with LibSVM? Does the program output the result you expected? BTW, the LibSVM parameters should be '-c 1 -g 0.00153' (you lacked the ending single quote).
    – grapeot
    Jan 21, 2012 at 13:30
  • 1
    @lakesh: I posted an answer to a similar question, you might find useful: stackoverflow.com/a/9049808/97160
    – Amro
    Jan 31, 2012 at 20:06

3 Answers 3

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%# Fisher Iris dataset
load fisheriris
[~,~,labels] = unique(species);   %# labels: 1/2/3
data = zscore(meas);              %# scale features
numInst = size(data,1);
numLabels = max(labels);

%# split training/testing
idx = randperm(numInst);
numTrain = 100; numTest = numInst - numTrain;
trainData = data(idx(1:numTrain),:);  testData = data(idx(numTrain+1:end),:);
trainLabel = labels(idx(1:numTrain)); testLabel = labels(idx(numTrain+1:end));
%# train one-against-all models
model = cell(numLabels,1);
for k=1:numLabels
    model{k} = svmtrain(double(trainLabel==k), trainData, '-c 1 -g 0.2 -b 1');
end

%# get probability estimates of test instances using each model
prob = zeros(numTest,numLabels);
for k=1:numLabels
    [~,~,p] = svmpredict(double(testLabel==k), testData, model{k}, '-b 1');
    prob(:,k) = p(:,model{k}.Label==1);    %# probability of class==k
end

%# predict the class with the highest probability
[~,pred] = max(prob,[],2);
acc = sum(pred == testLabel) ./ numel(testLabel)    %# accuracy
C = confusionmat(testLabel, pred)                   %# confusion matrix
0
4

From the code I can see you are trying to first turn the labels into "some class" vs "not this class", and then invoke LibSVM to do training and testing. Some questions and suggestions:

  1. Why are you using the original TrainingLabel for training? In my opinion, should it be model = svmtrain(newClass, TrainVec, '-c 1 -g 0.00154');?
  2. With modified training mechanism, you also need to tweak the prediction part, such as using sum-pooling to determine the final label. Using -b switch in LibSVM to enable probability output will also improve the accuracy.
10
  • thanks alot... btw, do u know how to do one vs one using LIBSVM? i am not sure how to do it...
    – lakshmen
    Jan 21, 2012 at 14:47
  • 1
    Simply putting labels other than 0<=>1 or -1<=>1 as input is fine. LibSVM will recognize it and try to do multi-class classification.
    – grapeot
    Jan 21, 2012 at 15:20
  • btw it is giving me this error when i change it to newClass : Error: label vector and instance matrix must be double model file should be a struct array
    – lakshmen
    Jan 21, 2012 at 15:42
  • when i change newClass=c1; to newClass=double(c1);, it gives me 0% classification
    – lakshmen
    Jan 21, 2012 at 15:45
  • 1
    An official implementation in python of one-against-all in python based on LibSVM can be found in the website: csie.ntu.edu.tw/~cjlin/libsvmtools/multilabel
    – grapeot
    Jan 21, 2012 at 16:27
1

Instead of probability estimates, you can also use the decision values as follows

[~,~,d] = svmpredict(double(testLabel==k), testData, model{k});
prob(:,k) = d * (2 * model{i}.Label(1) - 1);

to achieve the same purpose.

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