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I am having some problem with Serialization

Here goes my code for writing mClassifier object to a file:

FileOutputStream fileOut = new FileOutputStream("C:\\polarity.model");
ObjectOutputStream objOut = new ObjectOutputStream(fileOut);
mClassifier.compileTo(objOut);
objOut.close();

It works fine and writes stuff to the file.

But there is a catch: myClassifier object is of type DynamicLMClassifier. compileTo method above however returns an instance of LMClassifier (superclass)

Here goes my code for reading the object:

FileInputStream in = new FileInputStream("C:\\polarity.model");
ObjectInputStream ois = new ObjectInputStream(in);
mClassifier = (DynamicLMClassifier)(ois.readObject());
ois.close();

When I read the object I typecast it to DynamicLMClassifier and it too works fine but I dont get the output I desired. While reading the object again should it not be typecasted to LMClassifier rather than DynamicLMClassifier. However if I do that, compiler complains that it should be of type DynamicLMClassifier.

Can the above be problems or am I doing something wrong some where else. I mean the code without serialization is working perfectly fine and I get the desired output, I mean when the object is in memory.

EDIT: Here is the complete code (just remove the serialization part in the train() and getSentiments() method and it works as intended), Also note that in (1) With Serialization I am not calling getSentiments() and I am just training i.e. calling the train () method (2) Now i have a serialized model after (1) and I am not calling the train() method just calling getSentiment() by just commenting out appropriate code in main:

public class PolarityBasic{

    File mPolarityDir;
    String[] mCategories;
    DynamicLMClassifier<NGramProcessLM> mClassifier,readClassifier;

    PolarityBasic(String[] args) {
        System.out.println("\nBASIC POLARITY DEMO");
        mPolarityDir = new File("C:\\review_polarity","txt_sentoken");
        System.out.println("\nData Directory=" + mPolarityDir);
        mCategories = mPolarityDir.list();
        int nGram = 8;
        mClassifier 
            = DynamicLMClassifier
            .createNGramProcess(mCategories,nGram);
   }

    void run() throws ClassNotFoundException, IOException {
        train();
   }

    boolean isTrainingFile(File file) {
        return file.getName().charAt(2) != '9';  // test on fold 9
    }

    void train() throws IOException {
        int numTrainingCases = 0;
        int numTrainingChars = 0;
        System.out.println("\nTraining.");
        for (int i = 0; i < mCategories.length; ++i) {
            String category = mCategories[i];
            Classification classification
                = new Classification(category);
            File file = new File(mPolarityDir,mCategories[i]);
            File[] trainFiles = file.listFiles();
            for (int j = 0; j < trainFiles.length; ++j) {
                File trainFile = trainFiles[j];
                if (isTrainingFile(trainFile)) {
                    ++numTrainingCases;
                    String review = Files.readFromFile(trainFile,"ISO-8859-1");
                    numTrainingChars += review.length();
                    Classified<CharSequence> classified
                        = new Classified<CharSequence>(review,classification);
                    mClassifier.handle(classified);

                }
            }
        }
        FileOutputStream fileOut = new FileOutputStream("C:\\review_polarity/polarity.model");
        ObjectOutputStream objOut = new ObjectOutputStream(fileOut);
        mClassifier.compileTo(objOut);
        objOut.close();
        System.out.println("  # Training Cases=" + numTrainingCases);
        System.out.println("  # Training Chars=" + numTrainingChars);
    }


    String getSentiment(String text) {
        try{
            FileInputStream in = new FileInputStream("C:\\review_polarity/polarity.model");
            ObjectInputStream ois = new ObjectInputStream(in);
            mClassifier = (DynamicLMClassifier)(ois.readObject());
            ois.close();
        }
        catch(Exception e){}
        Classification classification = null;
        classification = readClassifier.classify(text);
        System.out.println("classification:  " + classification);
        return (classification.bestCategory());
    }

    public static void main(String[] args) {
        try {
            PolarityBasic pB = new PolarityBasic(args);
            pB.run();
            String text = null;
            text = "It was awesome !";
           System.out.println("The text \"" + text + "\" is "
         + pB.getSentiment(text));
        } catch (Throwable t) {
            System.out.println("Thrown: " + t);
            t.printStackTrace(System.out);
        }
    }

}
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2 Answers 2

I am not sure what youre compileTo method does, but I assume it uses the Java Serialization API (e.g., writeObject()) to write an object to a stream.

I am also not completely sure what your problem is. If mClassifier is of the static type DynamicLMClassifier which is a subclass of LMClassifier then it is obvious that you cannot assign an object of type LMClassifier to it. Thus, the cast to LMClassifier should yield a compiler error.

If you only persist instances of DynamicLMClassifier then you can safely typecast to that class.

So what is the result that you do not get but desire?

share|improve this answer
    
Thanks @SirRichie. I have added code snippet in my question which might help. –  Yavar Dec 17 '12 at 11:12
    
Ok. Why does PolarityBasic implement Serializable? You are not serializing PolarityBasic, you're (most likely) serializing DynamicLMClassifier So this must implement Serializable along with any field that you want to serialize (e.g., NGramProcessLM might also have to implement this). –  SirRichie Dec 17 '12 at 13:05
    
Thanks, yes you are right there is no need for Serializable here. –  Yavar Dec 18 '12 at 5:02
up vote 0 down vote accepted

Solved the problem. Here goes the code for reading the object back (instead of one given in the question):

LMClassifier readClassifier;
FileInputStream in = new FileInputStream("C:\\polarity.model");
ObjectInputStream ois = new ObjectInputStream(in);
readClassifier = (LMClassifier)(ois.readObject());
ois.close();
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