All Downloads are FREE. Search and download functionalities are using the official Maven repository.

gov.sandia.cognition.learning.algorithm.tree.PriorWeightedNodeLearner Maven / Gradle / Ivy

There is a newer version: 4.0.1
Show newest version
/*
 * File:                PriorWeightedNodeLearner.java
 * Authors:             Art Munson
 * Company:             Sandia National Laboratories
 * Project:             Cognitive Foundry
 *
 * Copyright September 6, 2011, Sandia Corporation.  Under the terms
 * of Contract DE-AC04-94AL85000, there is a non-exclusive license for
 * use of this work by or on behalf of the U.S. Government. Export of
 * this program may require a license from the United States
 * Government. See CopyrightHistory.txt for complete details.
 *
 */

package gov.sandia.cognition.learning.algorithm.tree;

import java.util.Map;

/**
 * The {@code PriorWeightedNodeLearner} interface specifies the
 * ability to configure prior weights on the learning algorithm that
 * searches for a decision function inside a decision tree.  The
 * {@code CategorizationTreeLearner} checks if the split criterion
 * supports this interface, and if it does, configures the split
 * criterion with prior weights and counts.
 *
 * Classes implementing {@code DeciderLearner} or {@code
 * VectorThresholdMaximumGainLearner} should consider whether it makes
 * sense to also implement this class.
 *
 * @param   The (output) type for the decision tree.  E.g., Integer.
 * @author   Art Munson
 * @since    3.4
 */
public interface PriorWeightedNodeLearner
{
    /**
     * Configure the node learner with prior weights and training counts.
     * 
*
* If the prior weights are not specified, this method will * configure default priors that match the relative frequencies of * the different categories in the training data. The frequencies * are based on the given category counts from the training data. * * @param priors * Prior weights for each of the possible output values (i.e., * the categories for the prediction task). If null, the * method will estimate default priors from the training * counts. * @param trainCounts * Frequency counts of the possible output values (i.e., * categories) in the training data. This parameter should * always be specified. */ public void configure( final Map priors, final Map trainCounts); }




© 2015 - 2024 Weber Informatics LLC | Privacy Policy