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Im trying to build a text classifier in JAVA with Weka. I have read some tutorials, and I´m trying to build my own classifier.

I have the following categories:


and the following already trained data

 cs belongs to computer
 java -> computer
 soccer -> sport
 snowboard -> sport

So for example, if a user wants to classify the word java, it should return the category computer (no doubt, java only exists in that category!).

It does compile, but generates strange output.

The output is:

      ====== RESULT ======  CLASSIFIED AS:  [0.5769230769230769, 0.2884615384615385, 0.1346153846153846]
      ====== RESULT ======  CLASSIFIED AS:  [0.42857142857142855, 0.42857142857142855, 0.14285714285714285]

But the first text to classify is java and it occures only in the category computer, therefore it should be

      [1.0 0.0 0.0] 

and for the other it shouldnt be found at all, so it should be classified as unknown

      [0.0 0.0 1.0].

Here is the code:

    import java.io.FileNotFoundException;
    import java.io.Serializable;
    import java.util.Arrays;

    import weka.classifiers.Classifier;
    import weka.classifiers.bayes.NaiveBayesMultinomialUpdateable;
    import weka.core.Attribute;
    import weka.core.FastVector;
    import weka.core.Instance;
    import weka.core.Instances;
    import weka.filters.Filter;
    import weka.filters.unsupervised.attribute.StringToWordVector;

    public class TextClassifier implements Serializable {

        private static final long serialVersionUID = -1397598966481635120L;
        public static void main(String[] args) {
            try {
                TextClassifier cl = new TextClassifier(new NaiveBayesMultinomialUpdateable());

                cl.addData("cs", "computer");
                cl.addData("java", "computer");
                cl.addData("soccer", "sport");
                cl.addData("snowboard", "sport");

                double[] result = cl.classifyMessage("java");
                System.out.println("====== RESULT ====== \tCLASSIFIED AS:\t" + Arrays.toString(result));

                result = cl.classifyMessage("asdasdasd");
                System.out.println("====== RESULT ======\tCLASSIFIED AS:\t" + Arrays.toString(result));
            } catch (Exception e) {
        private Instances trainingData;
        private StringToWordVector filter;
        private Classifier classifier;
        private boolean upToDate;
        private FastVector classValues;
        private FastVector attributes;
        private boolean setup;

        private Instances filteredData;

        public TextClassifier(Classifier classifier) throws FileNotFoundException {
            this(classifier, 10);

        public TextClassifier(Classifier classifier, int startSize) throws FileNotFoundException {
            this.filter = new StringToWordVector();
            this.classifier = classifier;
            // Create vector of attributes.
            this.attributes = new FastVector(2);
            // Add attribute for holding texts.
            this.attributes.addElement(new Attribute("text", (FastVector) null));
            // Add class attribute.
            this.classValues = new FastVector(startSize);
            this.setup = false;


        public void addCategory(String category) {
            category = category.toLowerCase();
            // if required, double the capacity.
            int capacity = classValues.capacity();
            if (classValues.size() > (capacity - 5)) {
                classValues.setCapacity(capacity * 2);

        public void addData(String message, String classValue) throws IllegalStateException {
            if (!setup) {
                throw new IllegalStateException("Must use setup first");
            message = message.toLowerCase();
            classValue = classValue.toLowerCase();
            // Make message into instance.
            Instance instance = makeInstance(message, trainingData);
            // Set class value for instance.
            // Add instance to training data.
            upToDate = false;

         * Check whether classifier and filter are up to date. Build i necessary.
         * @throws Exception
        private void buildIfNeeded() throws Exception {
            if (!upToDate) {
                // Initialize filter and tell it about the input format.
                // Generate word counts from the training data.
                filteredData = Filter.useFilter(trainingData, filter);
                // Rebuild classifier.
                upToDate = true;

        public double[] classifyMessage(String message) throws Exception {
            message = message.toLowerCase();
            if (!setup) {
                throw new Exception("Must use setup first");
            // Check whether classifier has been built.
            if (trainingData.numInstances() == 0) {
                throw new Exception("No classifier available.");
            Instances testset = trainingData.stringFreeStructure();
            Instance testInstance = makeInstance(message, testset);

            // Filter instance.
            Instance filteredInstance = filter.output();
            return classifier.distributionForInstance(filteredInstance);


        private Instance makeInstance(String text, Instances data) {
            // Create instance of length two.
            Instance instance = new Instance(2);
            // Set value for message attribute
            Attribute messageAtt = data.attribute("text");
            instance.setValue(messageAtt, messageAtt.addStringValue(text));
            // Give instance access to attribute information from the dataset.
            return instance;

        public void setupAfterCategorysAdded() {
            attributes.addElement(new Attribute("class", classValues));
            // Create dataset with initial capacity of 100, and set index of class.
            trainingData = new Instances("MessageClassificationProblem", attributes, 100);
            trainingData.setClassIndex(trainingData.numAttributes() - 1);
            setup = true;


Btw, found a good page:


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3 Answers 3

up vote 2 down vote accepted

The Bayes classifier gives you a (weighted) probability that a word belongs to a category. This will almost never be exactly 0 or 1. You can either set a hard cutoff (e.g. 0.5) and decide membership for a class based on this, or inspect the calculated probabilities and decide based on that (i.e. the highest map to 1, the lowest to 0).

share|improve this answer
Yes I know that. But in this example, when I try to classify: result = cl.classifyMessage("asdasdasd"); the result should be classified as unknown, but it is not :/ But, I can see know that it probably wont work. Because i dont have any documents at all for that category... Is there any smart solution for adding a "uknown" category or similar? And also for the word java, I thought it would be weighted more towards the computer category, because it is not even mentioned in the other categories. –  joxxe Mar 14 '12 at 21:47
You would have to manually add things to an "unknown" category if the probability for the membership of each of your classes is too low. –  Lars Kotthoff Mar 14 '12 at 21:50
But the probabilities together is always 1.0. So if I try to classify some word that does not exist in any document, the probabilities together (for all categories) is still 1.0 –  joxxe Mar 14 '12 at 22:01
They can still all be below 0.5, for example. You'll have to make the decision which probability to choose to mean "belongs to this category" anyway. –  Lars Kotthoff Mar 14 '12 at 22:09
Lars: Thats true. Could be one solution. Another solution could be to check the already trained documents for this word, and if it not exists in any document I could skip the actual classifier and just return "unknown" –  joxxe Mar 14 '12 at 22:10

I thought i would just offer up that you could do most such text classification work with no coding by just downloading and using LightSIDE from http://lightsidelabs.com. This open source Java package includes WEKA, and is available for distributions on both Windows and Mac -- can can process most WEKA friendly data sets with great flexibility, allowing you to iterate through various models, settings and parameters and providing good support to snapshots and saving your data and models and classification results at any point until you have built a model you are happy with. This product proved itself in the ASAP competition on Kaggle.com last year, and is getting a lot of traction. Of course there are always reasons people want or need to "roll their own" but perhaps even as a check, knowing about and using LightSIDE if you are programming WEKA solutions could be very handy.

share|improve this answer

If you try to get definitive class instead of distributions, try to switch

return classifier.distributionForInstance(filteredInstance);


return classifier.classifyInstance(filteredInstance);

share|improve this answer
this answer is difficult to understand - when you post code, you should try to explain it –  ronalchn Jan 27 '13 at 7:19
Well if joxxe try this out in his code , he will understand what I mean. Anyway, the distributionForInstance() method returns probabilities for each target classes. And classifyInstance() method pick the class with the highest probability and return the class index. So I guess joxxe need the second method. –  Ao.Shen Feb 4 '13 at 20:27

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