Caffe
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Computes the multinomial logistic loss for a one-of-many classification task, directly taking a predicted probability distribution as input. More...
#include <multinomial_logistic_loss_layer.hpp>
Public Member Functions | |
MultinomialLogisticLossLayer (const LayerParameter ¶m) | |
virtual void | Reshape (const vector< Blob< Dtype > *> &bottom, const vector< Blob< Dtype > *> &top) |
Adjust the shapes of top blobs and internal buffers to accommodate the shapes of the bottom blobs. More... | |
virtual const char * | type () const |
Returns the layer type. | |
Public Member Functions inherited from caffe::LossLayer< Dtype > | |
LossLayer (const LayerParameter ¶m) | |
virtual void | LayerSetUp (const vector< Blob< Dtype > *> &bottom, const vector< Blob< Dtype > *> &top) |
Does layer-specific setup: your layer should implement this function as well as Reshape. More... | |
virtual int | ExactNumBottomBlobs () const |
Returns the exact number of bottom blobs required by the layer, or -1 if no exact number is required. More... | |
virtual bool | AutoTopBlobs () const |
For convenience and backwards compatibility, instruct the Net to automatically allocate a single top Blob for LossLayers, into which they output their singleton loss, (even if the user didn't specify one in the prototxt, etc.). | |
virtual int | ExactNumTopBlobs () const |
Returns the exact number of top blobs required by the layer, or -1 if no exact number is required. More... | |
virtual bool | AllowForceBackward (const int bottom_index) const |
Public Member Functions inherited from caffe::Layer< Dtype > | |
Layer (const LayerParameter ¶m) | |
void | SetUp (const vector< Blob< Dtype > *> &bottom, const vector< Blob< Dtype > *> &top) |
Implements common layer setup functionality. More... | |
Dtype | Forward (const vector< Blob< Dtype > *> &bottom, const vector< Blob< Dtype > *> &top) |
Given the bottom blobs, compute the top blobs and the loss. More... | |
void | Backward (const vector< Blob< Dtype > *> &top, const vector< bool > &propagate_down, const vector< Blob< Dtype > *> &bottom) |
Given the top blob error gradients, compute the bottom blob error gradients. More... | |
vector< shared_ptr< Blob< Dtype > > > & | blobs () |
Returns the vector of learnable parameter blobs. | |
const LayerParameter & | layer_param () const |
Returns the layer parameter. | |
virtual void | ToProto (LayerParameter *param, bool write_diff=false) |
Writes the layer parameter to a protocol buffer. | |
Dtype | loss (const int top_index) const |
Returns the scalar loss associated with a top blob at a given index. | |
void | set_loss (const int top_index, const Dtype value) |
Sets the loss associated with a top blob at a given index. | |
virtual int | MinBottomBlobs () const |
Returns the minimum number of bottom blobs required by the layer, or -1 if no minimum number is required. More... | |
virtual int | MaxBottomBlobs () const |
Returns the maximum number of bottom blobs required by the layer, or -1 if no maximum number is required. More... | |
virtual int | MinTopBlobs () const |
Returns the minimum number of top blobs required by the layer, or -1 if no minimum number is required. More... | |
virtual int | MaxTopBlobs () const |
Returns the maximum number of top blobs required by the layer, or -1 if no maximum number is required. More... | |
virtual bool | EqualNumBottomTopBlobs () const |
Returns true if the layer requires an equal number of bottom and top blobs. More... | |
bool | param_propagate_down (const int param_id) |
Specifies whether the layer should compute gradients w.r.t. a parameter at a particular index given by param_id. More... | |
void | set_param_propagate_down (const int param_id, const bool value) |
Sets whether the layer should compute gradients w.r.t. a parameter at a particular index given by param_id. | |
Protected Member Functions | |
virtual void | Forward_cpu (const vector< Blob< Dtype > *> &bottom, const vector< Blob< Dtype > *> &top) |
Computes the multinomial logistic loss for a one-of-many classification task, directly taking a predicted probability distribution as input. More... | |
virtual void | Backward_cpu (const vector< Blob< Dtype > *> &top, const vector< bool > &propagate_down, const vector< Blob< Dtype > *> &bottom) |
Computes the multinomial logistic loss error gradient w.r.t. the predictions. More... | |
Protected Member Functions inherited from caffe::Layer< Dtype > | |
virtual void | Forward_gpu (const vector< Blob< Dtype > *> &bottom, const vector< Blob< Dtype > *> &top) |
Using the GPU device, compute the layer output. Fall back to Forward_cpu() if unavailable. | |
virtual void | Backward_gpu (const vector< Blob< Dtype > *> &top, const vector< bool > &propagate_down, const vector< Blob< Dtype > *> &bottom) |
Using the GPU device, compute the gradients for any parameters and for the bottom blobs if propagate_down is true. Fall back to Backward_cpu() if unavailable. | |
virtual void | CheckBlobCounts (const vector< Blob< Dtype > *> &bottom, const vector< Blob< Dtype > *> &top) |
void | SetLossWeights (const vector< Blob< Dtype > *> &top) |
Additional Inherited Members | |
Protected Attributes inherited from caffe::Layer< Dtype > | |
LayerParameter | layer_param_ |
Phase | phase_ |
vector< shared_ptr< Blob< Dtype > > > | blobs_ |
vector< bool > | param_propagate_down_ |
vector< Dtype > | loss_ |
Computes the multinomial logistic loss for a one-of-many classification task, directly taking a predicted probability distribution as input.
When predictions are not already a probability distribution, you should instead use the SoftmaxWithLossLayer, which maps predictions to a distribution using the SoftmaxLayer, before computing the multinomial logistic loss. The SoftmaxWithLossLayer should be preferred over separate SoftmaxLayer + MultinomialLogisticLossLayer as its gradient computation is more numerically stable.
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protectedvirtual |
Computes the multinomial logistic loss error gradient w.r.t. the predictions.
Gradients cannot be computed with respect to the label inputs (bottom[1]), so this method ignores bottom[1] and requires !propagate_down[1], crashing if propagate_down[1] is set.
top | output Blob vector (length 1), providing the error gradient with respect to the outputs |
propagate_down | see Layer::Backward. propagate_down[1] must be false as we can't compute gradients with respect to the labels. |
bottom | input Blob vector (length 2)
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Implements caffe::Layer< Dtype >.
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protectedvirtual |
Computes the multinomial logistic loss for a one-of-many classification task, directly taking a predicted probability distribution as input.
When predictions are not already a probability distribution, you should instead use the SoftmaxWithLossLayer, which maps predictions to a distribution using the SoftmaxLayer, before computing the multinomial logistic loss. The SoftmaxWithLossLayer should be preferred over separate SoftmaxLayer + MultinomialLogisticLossLayer as its gradient computation is more numerically stable.
bottom | input Blob vector (length 2) |
top | output Blob vector (length 1)
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Implements caffe::Layer< Dtype >.
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virtual |
Adjust the shapes of top blobs and internal buffers to accommodate the shapes of the bottom blobs.
bottom | the input blobs, with the requested input shapes |
top | the top blobs, which should be reshaped as needed |
This method should reshape top blobs as needed according to the shapes of the bottom (input) blobs, as well as reshaping any internal buffers and making any other necessary adjustments so that the layer can accommodate the bottom blobs.
Reimplemented from caffe::LossLayer< Dtype >.