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I have installed "Matlab Weka Interface" from here. My code to use BayesNet is as follows, but it throws an exception. Please help me how to pass the options.

Code:

    try
    classifierNo=classifierNo+1;
    wekaClassifierName = 'bayes.BayesNet';
    wekaClassifierConfig = {'-D -Q weka.classifiers.bayes.net.search.local.K2 -- -P 1 -S BAYES -E weka.classifiers.bayes.net.estimate.SimpleEstimator -- -A 0.5'};

    for i = 1:10
        test = (indices == i); 
        train = ~test;
        testSize = sum(test);

        if testOriginal==0
            train = [num2cell(mskMat(train,:)),irisLabels(train,:)];
            test  = [num2cell(global_origMat(test,:)),irisLabels(test,:)];

            %Convert to weka format
            train = matlab2weka('iTrain',featureNames,train,classIndex);
            test =  matlab2weka('iTest',featureNames,test);

            %Train the classifier
            nb = trainWekaClassifier(train,wekaClassifierName,wekaClassifierConfig);

            %Test the classifier
            predicted = wekaClassify(test,nb);

            %The actual class labels (i.e. indices thereof)
            actual = test.attributeToDoubleArray(classIndex-1); 

            correctRate = sum(actual == predicted)/testSize;
        else
            train = [num2cell(global_origMat(train,:)),irisLabels(train,:)];
            test  = [num2cell(global_origMat(test,:)),irisLabels(test,:)];

            %Convert to weka format
            train = matlab2weka('iTrain',featureNames,train,classIndex);
            test =  matlab2weka('iTest',featureNames,test);

            %Train the classifier
            nb = trainWekaClassifier(train,wekaClassifierName,wekaClassifierConfig);

            %Test the classifier
            predicted = wekaClassify(test,nb);

            %The actual class labels (i.e. indices thereof)
            actual = test.attributeToDoubleArray(classIndex-1); 

            correctRate = sum(actual == predicted)/testSize;
        end
    end

    fprintf ('%f \n\t\t\t\t\t\t',correctRate);
    sumCorrect(classifierNo)=sumCorrect(classifierNo)+correctRate;
    repeatClassifier(classifierNo) = repeatClassifier(classifierNo) + 1;
end

The error is as follows:

Error using weka.classifiers.bayes.BayesNet/setOptions
Java exception occurred:
java.lang.Exception: Illegal options: -D -Q weka.classifiers.bayes.net.search.local.K2 -- -P 1 -S BAYES -E
weka.classifiers.bayes.net.estimate.SimpleEstimator -- -A 0.5

    at weka.core.Utils.checkForRemainingOptions(Utils.java:482)

    at weka.classifiers.bayes.BayesNet.setOptions(BayesNet.java:510)"
share|improve this question

The error means you are passing using an invalid argument in the variable wekaClassifierConfig. I'm not familiar with this package so I don't know which argument is bad, I'd start by going back to the documentation or removing the arguments one by one to see which one is causing the error.

share|improve this answer
    
Thank you for your help. I found after some tries that I must split the options. However this is not documented. Thank you again. – remo Nov 20 '12 at 17:58

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