# How to compute the probability of a multi-class prediction using libsvm?

I'm using libsvm and the documentation leads me to believe that there's a way to output the believed probability of an output classification's accuracy. Is this so? And if so, can anyone provide a clear example of how to do it in code?

Currently, I'm using the Java libraries in the following manner

``````    SvmModel model = Svm.svm_train(problem, parameters);
SvmNode x[] = getAnArrayOfSvmNodesForProblem();
double predictedValue = Svm.svm_predict(model, x);
``````
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Given your code-snippet, I'm going to assume you want to use the Java API packaged with libSVM, rather than the more verbose one provided by jlibsvm.

To enable prediction with probability estimates, train a model with the svm_parameter field probability set to 1. Then, just change your code so that it calls the svm method `svm_predict_probability` rather than `svm_predict`.

``````parameters.probability = 1;
svm_model model = svm.svm_train(problem, parameters);

svm_node x[] = problem.x[0]; // let's try the first data pt in problem
double[] prob_estimates = new double[NUM_LABEL_CLASSES];
svm.svm_predict_probability(model, x, prob_estimates);
``````

It's worth knowing that training with multiclass probability estimates can change the predictions made by the classifier. For more on this, see the question Calculating Nearest Match to Mean/Stddev Pair With LibSVM.

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@dmcer Which package has the smaller learning curve (the Java API packaged with libSVM or jlibsvm)? I'm a newbie to SVMs in general. –  GobiasKoffi Oct 15 '10 at 14:49
@rohanbk - probably jlibsvm, since it looks and feels like a typical Java API. –  dmcer Oct 15 '10 at 23:20
@dmcer Do you have any experience with using WEKA for SVMs? –  GobiasKoffi Oct 16 '10 at 5:26
@rohanbk - Not too much. But, it would be a reasonably good choice, since it would allow you to easily benchmark other classifiers on your data. –  dmcer Oct 16 '10 at 9:20
@rohanbk - The only good sample code I know of is the "legacyexec" command line tools: dev.davidsoergel.com/trac/jlibsvm/browser/trunk/src/main/java/… –  dmcer Oct 19 '10 at 1:39

The accepted answer worked like a charm. Make sure to set `probability = 1` during training.

If you are trying to drop prediction when the confidence is not met with threshold, here is the code sample:

``````double confidenceScores[] = new double[model.nr_class];
svm.svm_predict_probability(model, svmVector, confidenceScores);

/*System.out.println("text="+ text);
for (int i = 0; i < model.nr_class; i++) {
System.out.println("i=" + i + ", labelNum:" + model.label[i] + ", name=" + classLoadMap.get(model.label[i]) + ", score="+confidenceScores[i]);
}*/

//finding max confidence;
int maxConfidenceIndex = 0;
double maxConfidence = confidenceScores[maxConfidenceIndex];
for (int i = 1; i < confidenceScores.length; i++) {
if(confidenceScores[i] > maxConfidence){
maxConfidenceIndex = i;
maxConfidence = confidenceScores[i];
}
}

double threshold = 0.3; // set this based data & no. of classes
int labelNum = model.label[maxConfidenceIndex];
// reverse map number to name
LOG.info("classNumber:{}, className:{}; confidence:{}; for text:{}",
labelNum, targetClassLabel, (maxConfidence), text);
if (maxConfidence < threshold ) {
LOG.info("Not enough confidence; threshold={}", threshold);
targetClassLabel = null;
}
return targetClassLabel;
``````
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