Anybody can help me by providing libsvm java example for training and testing. I am new in Machine learning and need help regarding the same. Earlier provided example by @machine learner have error giving only one class result. I don't want to use weka as suggestion given in earlier post.

Or can you rectify error in this code it always predict one class in result.(I want to perform multiclassification).

This example is given by "Machine learner"

```
import java.io.*;
import java.util.*;
import libsvm.*;
public class Test{
public static void main(String[] args) throws Exception{
// Preparing the SVM param
svm_parameter param=new svm_parameter();
param.svm_type=svm_parameter.C_SVC;
param.kernel_type=svm_parameter.RBF;
param.gamma=0.5;
param.nu=0.5;
param.cache_size=20000;
param.C=1;
param.eps=0.001;
param.p=0.1;
HashMap<Integer, HashMap<Integer, Double>> featuresTraining=new HashMap<Integer, HashMap<Integer, Double>>();
HashMap<Integer, Integer> labelTraining=new HashMap<Integer, Integer>();
HashMap<Integer, HashMap<Integer, Double>> featuresTesting=new HashMap<Integer, HashMap<Integer, Double>>();
HashSet<Integer> features=new HashSet<Integer>();
//Read in training data
BufferedReader reader=null;
try{
reader=new BufferedReader(new FileReader("a1a.train"));
String line=null;
int lineNum=0;
while((line=reader.readLine())!=null){
featuresTraining.put(lineNum, new HashMap<Integer,Double>());
String[] tokens=line.split("\\s+");
int label=Integer.parseInt(tokens[0]);
labelTraining.put(lineNum, label);
for(int i=1;i<tokens.length;i++){
String[] fields=tokens[i].split(":");
int featureId=Integer.parseInt(fields[0]);
double featureValue=Double.parseDouble(fields[1]);
features.add(featureId);
featuresTraining.get(lineNum).put(featureId, featureValue);
}
lineNum++;
}
reader.close();
}catch (Exception e){
}
//Read in test data
try{
reader=new BufferedReader(new FileReader("a1a.t"));
String line=null;
int lineNum=0;
while((line=reader.readLine())!=null){
featuresTesting.put(lineNum, new HashMap<Integer,Double>());
String[] tokens=line.split("\\s+");
for(int i=1; i<tokens.length;i++){
String[] fields=tokens[i].split(":");
int featureId=Integer.parseInt(fields[0]);
double featureValue=Double.parseDouble(fields[1]);
featuresTesting.get(lineNum).put(featureId, featureValue);
}
lineNum++;
}
reader.close();
}catch (Exception e){
}
//Train the SVM model
svm_problem prob=new svm_problem();
int numTrainingInstances=featuresTraining.keySet().size();
prob.l=numTrainingInstances;
prob.y=new double[prob.l];
prob.x=new svm_node[prob.l][];
for(int i=0;i<numTrainingInstances;i++){
HashMap<Integer,Double> tmp=featuresTraining.get(i);
prob.x[i]=new svm_node[tmp.keySet().size()];
int indx=0;
for(Integer id:tmp.keySet()){
svm_node node=new svm_node();
node.index=id;
node.value=tmp.get(id);
prob.x[i][indx]=node;
indx++;
}
prob.y[i]=labelTraining.get(i);
}
svm_model model=svm.svm_train(prob,param);
for(Integer testInstance:featuresTesting.keySet()){
HashMap<Integer, Double> tmp=new HashMap<Integer, Double>();
int numFeatures=tmp.keySet().size();
svm_node[] x=new svm_node[numFeatures];
int featureIndx=0;
for(Integer feature:tmp.keySet()){
x[featureIndx]=new svm_node();
x[featureIndx].index=feature;
x[featureIndx].value=tmp.get(feature);
featureIndx++;
}
double d=svm.svm_predict(model, x);
System.out.println(testInstance+"\t"+d);
}
}
}
```