Exemple #1
0
	public void train() throws Exception {
		/*
		 * Read the training dataset into an object which implements DataIter
		 * interface(trainData). Each of the training instance is encapsulated
		 * in the object which provides DataSequence interface. The DataIter
		 * interface returns object of DataSequence (training instance) in
		 * next() routine.
		 */
		DataIterImpl trainData = new DataIterImpl();

		/*
		 * Once you have loaded the training dataset, you need to allocate
		 * objects for the model to be learned. allocmodel() method does that
		 * allocation.
		 */
		allocModel();

		/*
		 * You may need to train some of the feature types class. This training
		 * is needed for features which need to learn from the training data for
		 * instance dictionary features build generated from the training set.
		 */
		featureGen.train(trainData);

		/*
		 * Call train routine of the CRF model to train the model using the
		 * train data. This routine returns the learned weight for the features.
		 */
		double featureWts[] = crfModel.train(trainData);

		/*
		 * You can store the learned model for later use into disk. For this you
		 * will have to store features as well as their corresponding weights.
		 */
		crfModel.write(baseDir + "/learntModels/" + outDir + "/crf");
		featureGen.write(baseDir + "/learntModels/" + outDir + "/features");

	}
Exemple #2
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	public void test() throws Exception {
	    /*
	     * Read the test dataset. Each of the test instance is encapsulated in the 
	     * object which provides DataSequence interface. 
	     */

	    /*
	     * Once you have loaded the test dataset, you need to allocate objects 
	     * for the model to be learned. allocmodel() method does that allocation.
	     * Also, you need to read learned parameters from the disk stored after
	     * training. If the model is already available in the memory, then you do 
	     * not need to reallocate the model i.e. you can skip the next step in that
	     * case.
	     */
		allocModel();
		featureGen.read(baseDir+"/learntModels/"+outDir+"/features");
		crfModel.read(baseDir+"/learntModels/"+outDir+"/crf");
	
	    /*
	     * Iterate over test data set and apply the crf model to each test instance.
	     */
	    while(...) { 
	    	/*
		 * Now apply CRF model to each test instance.
		 */
		crfModel.apply(testRecord);

		/*
		 * The labeled instance have value of the states as labels. 
		 * These state values are not labels as supplied during training.
		 * To map this state to one of the labels you need to call following
		 * method on the labled testRecord.
		 */
		featureGen.mapStatesToLabels(testRecord);
	    }
    }
Exemple #3
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	void allocModel() throws Exception {
		/*
		 * A CRF model consists of features and corresponding weights. The
		 * features are stored in FeatureGenImpl and weights and other CRF
		 * parameters are encapsulated in CRF object.
		 * 
		 * Here, you will call appropriate constructor for a feature generator
		 * and a CRF model. You can use feature generator available in the
		 * package or use your own implemented feature generator.
		 * 
		 * There are two CRF model classes: CRF and NestedCRF. The CRF class is
		 * flat CRF model while NestedCRF is a segment(semi-)CRF model.
		 */
		featureGen = new FeatureGenImpl(options.getProperty("modelGraph"),
				Integer.parseInt(options.getProperty("numLabels")));
		crfModel = new CRF(featureGen.numFeatures(), featureGen, options);
	}