LogSoftmax.cpp 17 KB
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/* NiuTrans.Tensor - an open-source tensor library
* Copyright (C) 2017, Natural Language Processing Lab, Northestern University.
* All rights reserved.
*
* Licensed under the Apache License, Version 2.0 (the "License");
* you may not use this file except in compliance with the License.
* You may obtain a copy of the License at
*
*   http://www.apache.org/licenses/LICENSE-2.0
*
* 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.
*/

/*
* $Created by: XIAO Tong (email: xiaotong@mail.neu.edu.cn) 2018-04-26
*/

#include <math.h>
#include "LogSoftmax.h"
#include "LogSoftmax.cuh"
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#include "../XName.h"
#include "../XUtility.h"
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#include "../core/reduce/ReduceSum.h"
#include "../core/reduce/ReduceMax.h"
#include "../core/movement/CopyValues.h"
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namespace nts { // namespace nts(NiuTrans.Tensor)

/*
log scale softmax y = log(e^x / \sum_{i} e^{x_i})
>> x - input vector
>> y - result
>> leadDim - leading dimension (along which we perform reduction)
*/
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void _LogSoftmax(const XTensor * x, XTensor * y, int leadDim)
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{
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    CheckNTErrors(!x->isSparse && !y->isSparse, "TODO!");
    CheckNTErrors(x && y, "Empty input tensors!");

    if(leadDim < 0)
        leadDim = x->order - 1;

    if(y->dimSize[leadDim] == 1){
        y->SetZeroAll();
        return;
    }

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    int leadDimRDI = x->order - leadDim - 1;
    if (!x->isSparse && !y->isSparse &&
        x->dataType == DEFAULT_DTYPE && y->dataType == DEFAULT_DTYPE)
    {
        int * dimSize = new int[x->order - 1];
        for (int i = 0; i < x->order; i++) {
            if (i < leadDim)
                dimSize[i] = -x->dimSize[i];
            else if (i > leadDim)
                dimSize[i - 1] = -x->dimSize[i];
        }

        XMem * mem = x->mem;
        XTensor * max = NULL;
        XTensor * sum = NULL;
        XTensor * blockx = NULL;
        XTensor * blocky = NULL;
        XTensor * blockMax = NULL;
        XTensor * blockSum = NULL;

        int dimensionSize = y->dimSizeRDI[leadDimRDI];
        int stride = 1;
        int blockSize = 1;
        int blockNum = 1;

        for (int i = 0; i < leadDimRDI; i++)
            stride *= y->dimSizeRDI[i];
        blockSize = stride * dimensionSize;
        blockNum = y->unitNum / blockSize;

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        max = NewTensorBuf(x->order - 1, dimSize, x->dataType, x->denseRatio, x->devID, mem);
        sum = NewTensorBuf(x->order - 1, dimSize, x->dataType, x->denseRatio, x->devID, mem);
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        _ReduceMax(x, max, leadDim);
        _ReduceSum(x, sum, leadDim, max, 1.0F, true);
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        if (x->devID >= 0) {
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            if(leadDimRDI == 0){
                blockSize = y->unitNum;
                blockNum  = 1;
                blockx = NewTensor2D(blockSize/dimensionSize, -dimensionSize, x->dataType, x->devID, mem);
                blocky = NewTensor2D(blockSize/dimensionSize, -dimensionSize, x->dataType, x->devID, mem);
                blockMax = NewTensor2D(blockSize/dimensionSize, -1, x->dataType, x->devID, mem);
                blockSum = NewTensor2D(blockSize/dimensionSize, -1, x->dataType, x->devID, mem);
            }
            else{
                blockx = NewTensor2D(-stride, dimensionSize, x->dataType, x->devID, mem);
                blocky = NewTensor2D(-stride, dimensionSize, x->dataType, x->devID, mem);
                blockMax = NewTensor2D(-stride, 1, x->dataType, x->devID, mem);
                blockSum = NewTensor2D(-stride, 1, x->dataType, x->devID, mem);
            }
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        }

        for (int k = 0; k < blockNum; k++) {
            int m = stride;
            int n = dimensionSize;

            DTYPE * ip = (DTYPE*)x->data + k * blockSize;
            DTYPE * op = (DTYPE*)y->data + k * blockSize;
            DTYPE * mp = (DTYPE*)max->data + k * blockSize / dimensionSize;
            DTYPE * sp = (DTYPE*)sum->data + k * blockSize / dimensionSize;

            if (x->devID < 0) {
                for (int j = 0; j < m; j++) {
                    DTYPE sumValue = sp[j];
                    if (sumValue == 0) {
                        for (int i = 0; i < n; i++)
                            op[i * m + j] = 0;
                    }
                    else {
                        for (int i = 0; i < n; i++) {
                            DTYPE r = (DTYPE)log(exp(ip[i * m + j] - mp[j]) / sp[j]);
                            if (IsNAN(r))
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                                r = LOGPROB_MIN;
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                            if (IsINF(r))
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                                r = LOGPROB_MIN;

                            op[i * m + j] = MAX(r, LOGPROB_MIN);
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                        }
                    }
                }
            }
            else {
                blockx->data = ip;
                blocky->data = op;
                blockMax->data = mp;
                blockSum->data = sp;
#ifdef USE_CUDA
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                if(leadDimRDI == 0)
                    _CudaLogSoftmaxSumMax(blockx, blocky, 1, blockSum, blockMax);
                else
                    _CudaLogSoftmaxSumMax(blockx, blocky, leadDim, blockSum, blockMax);
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#else
                ShowNTErrors("Please specify USE_CUDA and recompile the code!");
#endif
                blockx->data = NULL;
                blocky->data = NULL;
                blockMax->data = NULL;
                blockSum->data = NULL;
            }
        }

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        DelTensorBuf(max);
        DelTensorBuf(sum);

        if (x->devID >= 0) {
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            delete blockx;
            delete blocky;
            delete blockMax;
            delete blockSum;
        }

        delete[] dimSize;
    }
    else
        ShowNTErrors("TODO!");
}

/*
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log scale softmax y = log(e^x / \sum_{i} e^{x_i}) (return an XTensor structure) 
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make a new tensor to keep the result and return it

>> x - input vector
>> leadDim - leading dimension (along which we perform reduction)
<< return - y
*/
XTensor LogSoftmax(const XTensor &x, int leadDim)
{
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    int ld = leadDim;
    if (ld < 0)
        ld = x.order - 1;

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    XTensor y(&x);
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    y.SetTMPFlag();
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    /* call _LogSoftmax function */
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    _LogSoftmax(&x, &y, ld);
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    /* tensor connection */
    XLink::MakeLink(&x, NULL, &y, FUNC_LOGSOFTMAX);
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    XLink::AddParamToHeadInt(&y, ld);
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    return y;
}

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void LogSoftmax(const XTensor &x, XTensor &y, int leadDim, bool requireLink)
{
    int ld = leadDim;
    if (ld < 0)
        ld = x.order - 1;

    if (!y.isInit || !XTensor::IsSameShaped(&y, &x)) {
        InitTensor(&y, &x);
    }

    /* call _LogSoftmax function */
    _LogSoftmax(&x, &y, ld);

    if (requireLink) {
        /* tensor connection */
        XLink::MakeLink(&x, NULL, &y, FUNC_LOGSOFTMAX);
        XLink::AddParamToHeadInt(&y, ld);
    }
}
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/* 
log scale softmax y = log(e^x / \sum_{i} e^{x_i})
make a new tensor to keep the result and return it

>> x - input vector
>> y - output vector
>> leadDim - leading dimension (along which we perform reduction)
*/
void LogSoftmax(const XTensor &x, XTensor &y, int leadDim)
{
    if(!XTensor::IsSameShaped(&x, &y))
        InitTensor(&y, &x);

    /* call _LogSoftmax function */
    _LogSoftmax(&x, &y, leadDim);

    /* tensor connection */
    XLink::MakeLink(&x, NULL, &y, FUNC_LOGSOFTMAX);
    XLink::AddParamToHeadInt(&y, leadDim);
}

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/*
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backward computation for dense matrices with default data type

dE/dx = dE/dy * dy/dx

log softmax: y_i = log(e^{x_i} / \sum_{k} e^{x_k})

  dy_i/dx_j 
= d{log(e^{x_i} / \sum_{k} e^{x_k})}/dx_j
= d{log(e^{x_i})}/dx_j - d{log(\sum_{k} e^{x_k})}/dx_j
= \delta(i,j) - e^{x_j}/\sum_{k} e^{x_k})
= \delta(i,j) - exp(y_j)

where \delta(i,j) = 1 if i = j, and \delta(i,j) = 0 otherwise

if loss E is defined as cross entropy, i.e., E = -\sum_{k} (gold_k * y_k), we have

dE/dy_i = -gold_i

(where {gold_k} is the gold standard distribution)

then

dE/dx_j 
= \sum_{i} {dE/dy_i * dy_i/dx_j}
= \sum_{i} {-gold_i * (\delta(i,j) - exp(y_j))}
= \sum_{i} {-gold_i * \delta{i,j)} + \sum_{i} {gold_i * exp(y_j)}
= -gold_i * \delta(i,j) + \sum_{i} {gold_i * exp(y_j)}
= -gold_j + exp(y_j)

Note: gold_i is a distribution, i.e., \sum_{i} gold_i = 1
if gold is with a one-hot representation (gold_i = 1 for only one dimension),
we can reformulize it as dE/dx_j = -\delta(i,j) + exp(y_j)

There are two ways to implement this process.
Method 1. we compute dE/dy and dy/dx resepectively, and then reach dE/dx by dE/dx = dE/dy * dy/dx
(or more precisely dE/dx_j = \sum_{i} {dE/dy_i * dy_i/dx_j})
Method 2. we compute dE/dx (or dE/dx_j) in a single step, rather than resorting to the
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sub-models of dE/dy and dy/dx. We can do this by using dE/dx_j = -gold_j + exp(y_j)
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Here we choose Method 2, i.e., we straightforwardly compute dE/dx_j by

dE/dx_j = -gold_j + exp(y_j)

(or dE/dx_j = -\delta(i,j) + exp(y_j) for a Maximum A Posteriori Estimation (MAP))

Method 1 is also fine but is more time consuming due to the summation over dimensions.
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Note that this method is not good for the standard version softmax when we work with
the cross entropy loss because it is numerical unstable. When we use a usual method to
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define softmax, we have softmax: y_i = log(e^{x_i} / \sum_{k} e^{x_k}). It is trivial to
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know that dy_i/dx_j = y_i * \delta(i,j) - y_i * y_j. As y_i and y_j could be small numbers,
y_i * y_i would result in a much smaller value with a risk of lossing precision. This is even
worse we multiply dy_i/dx_j with dE/dy_i. So it is in general to use log softmax for
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better numerical stability.

>> gold - gold standard to measure error (or loss)
>> y - output of the function
>> x - input of the function
>> dedy - dE/dy
>> dedx - dE/dx
>> lossName - type of loss function, e.g., cross entropy
>> leadDim - leading dimension (along which we perform reduction)
*/
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void _LogSoftmaxBackward(XTensor * gold, XTensor * y, XTensor * x,
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                         XTensor * dedy, XTensor * dedx, 
                         XTensor * padding, int leadDim, 
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                         LOSS_FUNCTION_NAME lossName)
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{
    CheckNTErrors((!dedx->isSparse), "The gradient matrix must be dense!");
    CheckNTErrors((gold != NULL), "The gold standard cannot be empty!");

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    if(leadDim < 0)
        leadDim = y->order - 1;

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    int leadDimRDI = y->order - leadDim - 1;
#ifdef USE_CUDA
    if (gold->devID >= 0) {
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        _CudaLogSoftmaxBackward(gold, y, x, dedy, dedx, padding, leadDim, lossName);
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        return;
    }
#endif

    int dimensionSize = y->dimSizeRDI[leadDimRDI];
    int stride = 1;
    int blockSize = 1;
    int blockNum = 1;
    for (int i = 0; i < leadDimRDI; i++)
        stride *= y->dimSizeRDI[i];
    blockSize = stride * dimensionSize;
    blockNum = y->unitNum / blockSize;

    if (x->dataType == DEFAULT_DTYPE && y->dataType == DEFAULT_DTYPE)
    {
        DTYPE * gp = (DTYPE*)gold->data;
        DTYPE * op = (DTYPE*)y->data;
        DTYPE * sp = (DTYPE*)dedx->data;

        if (lossName == CROSSENTROPY) {
            if (gold->isSparse) {
                CheckNTErrors((gold->order == 2), "TODO!");
                int gm = gold->dimSize[1];
                int size = dimensionSize * stride;

                /* dE/dx_j = exp(y_j) */
                for (int j = 0; j < size; j++) {
                    *(sp + j) = (DTYPE)exp(*(op + j));
                }

                /* for j \in gold (sparse), dE/dx_j += -gold_j */
                int num = gold->GetNonzeroSize();
                for (int i = 0; i < num; i++) {
                    int key = gold->GetKeyInSparse(i);
                    DTYPE value = gold->GetInSparse(i);
                    int offset = key;
                    if (dedx->dimSizeRDI[0] != gm) {
                        int mi = key % gm;
                        int ni = key / gm;
                        int key2 = ni * dedx->dimSizeRDI[0] + mi;
                        offset = key2;
                    }
                    if (key >= 0 && key < size)
                        *(sp + offset) += -value;
                    else {
                        ShowNTErrors("Something is wrong with the matrix!");
                    }
                }
            }
            else {
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                CheckNTErrors((XTensor::IsSameShaped(gold, y)), "The tensors must be of the same size!");
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                for (int k = 0; k < blockNum; k++) {
                    gp = (DTYPE*)gold->data + k * blockSize;
                    op = (DTYPE*)y->data + k * blockSize;
                    sp = (DTYPE*)dedx->data + k * blockSize;
                    int size = stride * dimensionSize;

                    /* dE/ds_j = -gold_j + exp(y_j) */
                    for (int j = 0; j < size; j++) {
                        *(sp + j) = -(*(gp + j)) + (DTYPE)exp(*(op + j));
                    }
                }
            }
        }
        else if (lossName == SQUAREDERROR) {
            /*
            dE/dx_j = \sum_{i} {dE/dy_i * dy_i/dx_j}
            = \sum_{i} {(exp(y_i) - gold_i) * (\delta(i,j) - exp(y_j))}
            = \sum_{i} {(exp(y_i) - gold_i) * \delta(i,j)}
            - \sum_{i} {(exp(y_i) - gold_i) * exp(y_j)}
            = exp(y_j) - gold_j - exp(y_j) * (\sum_i{exp(y_i)} - \sum_i{gold_i})
            = exp(y_j) - gold_j - exp(y_j) * (1 - 1)
            = exp(y_j) - gold_j
            = gold_j - exp(y_j)
            i.e., minimizing squared error is actually the same as minimizing cross entropy
            when working with (log) softmax!
            */
            if (gold->isSparse) {
                CheckNTErrors((gold->order == 2), "TODO!");
                int gm = gold->dimSize[1];
                int size = dimensionSize * stride;

                /* dE/ds_j = exp(y_j) */
                for (int j = 0; j < size; j++) {
                    *(sp + j) = (DTYPE)exp(*(op + j));
                }

                /* for j \in gold (sparse), dE/ds_j += -gold_j */
                int num = gold->GetNonzeroSize();
                for (int i = 0; i < num; i++) {
                    int key = gold->GetKeyInSparse(i);
                    DTYPE value = gold->GetInSparse(i);
                    int offset = key;
                    if (dedx->dimSizeRDI[0] != gm) {
                        int mi = key % gm;
                        int ni = key / gm;
                        int key2 = ni * dedx->dimSizeRDI[0] + mi;
                        offset = key2;
                    }
                    if (key >= 0 && key < size)
                        *(sp + offset) += -value;
                }
            }
            else {
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                CheckNTErrors((XTensor::IsSameShaped(gold, y)), "The tensors must be of the same size!");
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                for (int k = 0; k < blockNum; k++) {
                    gp = (DTYPE*)gold->data + k * blockSize;
                    op = (DTYPE*)y->data + k * blockSize;
                    sp = (DTYPE*)dedx->data + k * blockSize;
                    int size = stride * dimensionSize;

                    /* dE/dx_j = -gold_j + exp(y_j) */
                    for (int j = 0; j < size; j++) {
                        *(sp + j) = -(*(gp + j)) + (DTYPE)exp(*(op + j));
                    }
                }
            }
        }
        else if (lossName == NOLOSS) {
            ShowNTErrors("TODO!");
        }
        else {
            ShowNTErrors("No loss function is found for (log) softmax!");
        }

        /* for columns with no xs we set dE/ds = 0 */
        if (gold != NULL && gold->isSparse) {
            CheckNTErrors((gold->order == 2), "The gold standard tensor must be of order 2!");
            if ((gold->dimSize[1] > 1 && !gold->isAllValued[0]) || gold->dimSize[1] != dedx->dimSizeRDI[0]) {
                int gn = gold->dimSize[0];
                int gm = gold->dimSize[1];
                int sm = dedx->dimSizeRDI[0];
                int sn = dedx->dimSizeRDI[1];

                int * flags = new int[sm];
                memset(flags, 0, sizeof(int)*sm);
                int num = gold->GetNonzeroSize();
                for (int i = 0; i < num; i++) {
                    int key = gold->GetKeyInSparse(i);
                    int mi = key % gm;
                    flags[mi] = 1;
                }
                for (int mi = 0; mi < sm; mi++) {
                    if (flags[mi] == 0) {
                        if (mi >= gm) {
                            for (int i = 0; i < sn; i++) {
                                int key = i * sm + mi;
                                int offset = key;
                                *(sp + offset) = 0;
                            }
                        }
                        else {
                            for (int i = 0; i < gn; i++) {
                                int key = i * gm + mi;
                                if (key >= 0 && key < dimensionSize) {
                                    int offset = key;
                                    *(sp + offset) = 0;
                                }
                                else {
                                    ShowNTErrors("Illegal key in the index of softmax");
                                }
                            }
                        }
                    }
                }
                delete[] flags;
            }
        }
    }
    else {
        XPRINT(0, stderr, "TODO!");
        exit(1);
    }
}

} // namespace nts(NiuTrans.Tensor)