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

org.nd4j.linalg.lossfunctions.impl.LossMCXENT Maven / Gradle / Ivy

There is a newer version: 1.0.0-M2.1
Show newest version
/*
 *  ******************************************************************************
 *  *
 *  *
 *  * This program and the accompanying materials are made available under the
 *  * terms of the Apache License, Version 2.0 which is available at
 *  * https://www.apache.org/licenses/LICENSE-2.0.
 *  *
 *  *  See the NOTICE file distributed with this work for additional
 *  *  information regarding copyright ownership.
 *  * Unless required by applicable law or agreed to in writing, software
 *  * distributed under the License is distributed on an "AS IS" BASIS, WITHOUT
 *  * WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the
 *  * License for the specific language governing permissions and limitations
 *  * under the License.
 *  *
 *  * SPDX-License-Identifier: Apache-2.0
 *  *****************************************************************************
 */

package org.nd4j.linalg.lossfunctions.impl;


import lombok.EqualsAndHashCode;
import lombok.Getter;
import lombok.Setter;
import org.nd4j.common.base.Preconditions;
import org.nd4j.linalg.activations.IActivation;
import org.nd4j.linalg.activations.impl.ActivationSoftmax;
import org.nd4j.linalg.api.ndarray.INDArray;
import org.nd4j.linalg.indexing.BooleanIndexing;
import org.nd4j.linalg.indexing.conditions.Conditions;
import org.nd4j.linalg.lossfunctions.ILossFunction;
import org.nd4j.linalg.lossfunctions.LossUtil;
import org.nd4j.linalg.ops.transforms.Transforms;
import org.nd4j.common.primitives.Pair;
import org.nd4j.serde.jackson.shaded.NDArrayTextDeSerializer;
import org.nd4j.serde.jackson.shaded.NDArrayTextSerializer;
import org.nd4j.shade.jackson.annotation.JsonInclude;
import org.nd4j.shade.jackson.annotation.JsonProperty;
import org.nd4j.shade.jackson.databind.annotation.JsonDeserialize;
import org.nd4j.shade.jackson.databind.annotation.JsonSerialize;

@EqualsAndHashCode
@JsonInclude(JsonInclude.Include.NON_NULL)
@Getter @Setter
public class LossMCXENT implements ILossFunction {
    private static final double DEFAULT_SOFTMAX_CLIPPING_EPSILON = 1e-10;

    @JsonSerialize(using = NDArrayTextSerializer.class)
    @JsonDeserialize(using = NDArrayTextDeSerializer.class)
    protected INDArray weights;

    protected double softmaxClipEps;

    public LossMCXENT() {
        this(null);
    }

    /**
     * Multi-Class Cross Entropy loss function where each the output is (optionally) weighted/scaled by a flags scalar value.
     * Note that the weights array must be a row vector, of length equal to the labels/output dimension 1 size.
     * A weight vector of 1s should give identical results to no weight vector.
     *
     * @param weights Weights array (row vector). May be null.
     */
    public LossMCXENT(INDArray weights) {
        this(DEFAULT_SOFTMAX_CLIPPING_EPSILON, weights);
    }

    /**
     * Multi-Class Cross Entropy loss function where each the output is (optionally) weighted/scaled by a fixed scalar value.
     * Note that the weights array must be a row vector, of length equal to the labels/output dimension 1 size.
     * A weight vector of 1s should give identical results to no weight vector.
     *
     * @param weights Weights array (row vector). May be null.
     */
    public LossMCXENT(@JsonProperty("softmaxClipEps") double softmaxClipEps, @JsonProperty("weights") INDArray weights) {
        if (weights != null && !weights.isRowVectorOrScalar()) {
            throw new IllegalArgumentException("Weights array must be a row vector");
        }
        if(softmaxClipEps < 0 || softmaxClipEps > 0.5){
            throw new IllegalArgumentException("Invalid clipping epsilon: epsilon should be >= 0 (but near zero). Got: "
                    + softmaxClipEps);
        }
        this.weights = weights;
        this.softmaxClipEps = softmaxClipEps;
    }

    protected INDArray scoreArray(INDArray labels, INDArray preOutput, IActivation activationFn, INDArray mask) {
        if(!labels.equalShapes(preOutput)){
            Preconditions.throwEx("Labels and preOutput must have equal shapes: got shapes %s vs %s", labels.shape(), preOutput.shape());
        }
        labels = labels.castTo(preOutput.dataType());   //No-op if already correct dtype

        INDArray output = activationFn.getActivation(preOutput.dup(), true);
        if(activationFn instanceof ActivationSoftmax && softmaxClipEps > 0.0){
            BooleanIndexing.replaceWhere(output, softmaxClipEps, Conditions.lessThan(softmaxClipEps));
            BooleanIndexing.replaceWhere(output, 1.0-softmaxClipEps, Conditions.greaterThan(1.0-softmaxClipEps));
        }
        INDArray scoreArr = Transforms.log(output, false).muli(labels);

        //Weighted loss function
        if (weights != null) {
            if (weights.length() != scoreArr.size(1)) {
                throw new IllegalStateException("Weights vector (length " + weights.length()
                                + ") does not match output.size(1)=" + preOutput.size(1));
            }
            scoreArr.muliRowVector(weights.castTo(scoreArr.dataType()));
        }

        if (mask != null) {
            LossUtil.applyMask(scoreArr, mask);
        }
        return scoreArr;
    }

    @Override
    public double computeScore(INDArray labels, INDArray preOutput, IActivation activationFn, INDArray mask,
                    boolean average) {
        INDArray scoreArr = scoreArray(labels, preOutput, activationFn, mask);

        double score = -scoreArr.sumNumber().doubleValue();

        if (average) {
            score /= scoreArr.size(0);
        }

        return score;
    }

    @Override
    public INDArray computeScoreArray(INDArray labels, INDArray preOutput, IActivation activationFn, INDArray mask) {
        INDArray scoreArr = scoreArray(labels, preOutput, activationFn, mask);
        return scoreArr.sum(true,1).muli(-1);
    }

    @Override
    public INDArray computeGradient(INDArray labels, INDArray preOutput, IActivation activationFn, INDArray mask) {
        if(!labels.equalShapes(preOutput)){
            Preconditions.throwEx("Labels and preOutput must have equal shapes: got shapes %s vs %s", labels.shape(), preOutput.shape());
        }
        INDArray grad;
        INDArray output = activationFn.getActivation(preOutput.dup(), true);
        labels = labels.castTo(preOutput.dataType());   //No-op if already correct dtype

        if (activationFn instanceof ActivationSoftmax) {

            if (mask != null && LossUtil.isPerOutputMasking(output, mask)) {
                throw new UnsupportedOperationException("Per output masking for MCXENT + softmax: not supported");
            }

            //Weighted loss function
            if (weights != null) {
                if (weights.length() != output.size(1)) {
                    throw new IllegalStateException("Weights vector (length " + weights.length()
                                    + ") does not match output.size(1)=" + output.size(1));
                }
                INDArray temp = labels.mulRowVector(weights.castTo(labels.dataType()));
                INDArray col = temp.sum(true,1);
                grad = output.mulColumnVector(col).sub(temp);
            } else {
                grad = output.subi(labels);
            }
        } else {
            INDArray dLda = output.rdivi(labels).negi();

            grad = activationFn.backprop(preOutput, dLda).getFirst(); //TODO activation function with weights

            //Weighted loss function
            if (weights != null) {
                if (weights.length() != output.size(1)) {
                    throw new IllegalStateException("Weights vector (length " + weights.length()
                                    + ") does not match output.size(1)=" + output.size(1));
                }
                grad.muliRowVector(weights.castTo(grad.dataType()));
            }
        }

        //Loss function with masking
        if (mask != null) {
            LossUtil.applyMask(grad, mask);
        }

        return grad;
    }

    @Override
    public Pair computeGradientAndScore(INDArray labels, INDArray preOutput, IActivation activationFn,
                    INDArray mask, boolean average) {
        //TODO: probably a more efficient way to do this...

        return new Pair<>(computeScore(labels, preOutput, activationFn, mask, average),
                        computeGradient(labels, preOutput, activationFn, mask));
    }

    /**
     * The opName of this function
     *
     * @return
     */
    @Override
    public String name() {
        return toString();
    }


    @Override
    public String toString() {
        if (weights == null)
            return "LossMCXENT()";
        return "LossMCXENT(weights=" + weights + ")";
    }
}




© 2015 - 2024 Weber Informatics LLC | Privacy Policy