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I am using LibSVM to carry out some multi-class classifications. I trained the model using the MATLAB interface of LibSVM. I then saved this model in a format that would be recognized in C. I now want to classify using svm_predict in C. I am having trouble being able to reproduce the results that I saw in MATLAB. In fact I get the same class output irrespective of what test vector I feed in (even a vector of zeros) I think the issue is with the way I am loading the test vector x into the svm_node structure. Below is the code snippet. Do let me know if this is correct way or if I am missing something.

struct svm_model *libsvm_model = svm_load_model('mymodel.svm');
struct svm_node x[2001]; // this is for one feature vector of size 2000x1
int index = 1;
int i = 0;

for (i = 0; i < features.size(); i++) {
  x[i].index = index;
  x[i].value = features.at(i); 
  index = index + 1; 
}

x[i+1].index = -1;
x[i+1].value = '?';

double result = svm_predict(libsvm_model, x);
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1 Answer 1

This seems to be a problem:

x[i+1].index = -1;
x[i+1].value = '?';

libsvm requires svm_node to be an input vector, which should have positive indexes, and double values. You should not "leave" some weird empty dimension.

And by the way, you don't need index variable

for (i = 0; i < features.size(); i++) {
  x[i].index = index;
  x[i].value = features.at(i); 
  index = index + 1; 
}

is equivalent to

for (i = 0; i < features.size(); i++) {
  x[i].index = i + 1;
  x[i].value = features.at(i);  
}
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