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The second output of the libsvmread command is a set of features for each given training example.

For example, in the following MATLAB command:

[heart_scale_label, heart_scale_inst] = libsvmread('../heart_scale');

This second variable (heart_scale_inst) holds content in a form that I don't understand, for example:

<1, 1> -> 0.70833

What is the meaning of it? How is it to be used (I can't plot it, the way it is)?

PS. If anyone could please recommend a good LIBSVM tutorial, I'd appreciate it. I haven't found anything useful and the README file isn't very clear... Thanks.

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Sounds like a sparse matrix. Type whos heart_scale_label heart_scale_inst to see. – chappjc Nov 11 '13 at 18:48
possible duplicate of How to use libsvm in Matlab? – chappjc Nov 11 '13 at 18:49
Thanks @chappjc. I've seen the link you mentioned before I posted my question; actually, I tried implementing the answer given to that question and that's where I'm stuck :( So what does the sparse matrix represent? Which part is the features and what is the rest...? – Cheshie Nov 11 '13 at 19:07
up vote 5 down vote accepted

The definitive tutorial for LIBSVM for beginners is called: A Practical Guide to SVM Classification it is available from the site of the authors of LIBSVM.

The second parameter returned is called the instance matrix. It is a matrix, let call it M, M(1,:) are the features of data point 1 and so on. The matrix is sparse that is why it prints out weirdly. If you want to see it fully print full(M).

[heart_scale_label, heart_scale_inst] = libsvmread('../heart_scale');

with heart_scale_label and heart_scale_inst you should be able to train an SVM by issuing:

mod = svmtrain(heart_scale_label,heart_scale_inst,'-c 1 -t 0');

I strong suggest you read the above linked guide to learn how to set the c parameter (and possibly, in case of RBF kernel the gamma parameter), but the above line is how you would train with that data.

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Thanks @carlosdc! It's so weird that it's a sparse matrix, there are hardly any zeros inside... I was confused because I wasn't even able to plot the matrix (as a graph) - but OK, now I see that plotting sparse matrices in octave isn't straightforward... so thanks again! :) – Cheshie Nov 12 '13 at 8:31

I think it is the probability with which test case has been predicted to heart_scale label category

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Thanks @MohitJain but libsvmread was performed before I even trained the data... how could it predict the labels already? – Cheshie Nov 11 '13 at 19:23
Sorry didn't see that before!! – Mohit Jain Nov 12 '13 at 5:28

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