Adadelta Optimizer class.
This class represents the Adadelta Optimizer.
Definition at line 45 of file Adadelta.h.
Public Types | |
| using | Matrix_t = typename Architecture_t::Matrix_t |
| using | Scalar_t = typename Architecture_t::Scalar_t |
Public Types inherited from TMVA::DNN::VOptimizer< Architecture_t, Layer_t, DeepNet_t > | |
| using | Matrix_t = typename Architecture_t::Matrix_t |
| using | Scalar_t = typename Architecture_t::Scalar_t |
Public Member Functions | |
| TAdadelta (DeepNet_t &deepNet, Scalar_t learningRate=1.0, Scalar_t rho=0.95, Scalar_t epsilon=1e-8) | |
| Constructor. | |
| ~TAdadelta ()=default | |
| Destructor. | |
| Scalar_t | GetEpsilon () const |
| std::vector< std::vector< Matrix_t > > & | GetPastSquaredBiasGradients () |
| std::vector< Matrix_t > & | GetPastSquaredBiasGradientsAt (size_t i) |
| std::vector< std::vector< Matrix_t > > & | GetPastSquaredBiasUpdates () |
| std::vector< Matrix_t > & | GetPastSquaredBiasUpdatesAt (size_t i) |
| std::vector< std::vector< Matrix_t > > & | GetPastSquaredWeightGradients () |
| std::vector< Matrix_t > & | GetPastSquaredWeightGradientsAt (size_t i) |
| std::vector< std::vector< Matrix_t > > & | GetPastSquaredWeightUpdates () |
| std::vector< Matrix_t > & | GetPastSquaredWeightUpdatesAt (size_t i) |
| Scalar_t | GetRho () const |
| Getters. | |
Public Member Functions inherited from TMVA::DNN::VOptimizer< Architecture_t, Layer_t, DeepNet_t > | |
| VOptimizer (Scalar_t learningRate, DeepNet_t &deepNet) | |
| Constructor. | |
| virtual | ~VOptimizer ()=default |
| Virtual Destructor. | |
| size_t | GetGlobalStep () const |
| Layer_t * | GetLayerAt (size_t i) |
| std::vector< Layer_t * > & | GetLayers () |
| Scalar_t | GetLearningRate () const |
| Getters. | |
| void | IncrementGlobalStep () |
| Increments the global step. | |
| void | SetLearningRate (size_t learningRate) |
| Setters. | |
| void | Step () |
| Performs one step of optimization. | |
Protected Member Functions | |
| void | UpdateBiases (size_t layerIndex, std::vector< Matrix_t > &biases, const std::vector< Matrix_t > &biasGradients) override |
| Update the biases, given the current bias gradients. | |
| void | UpdateWeights (size_t layerIndex, std::vector< Matrix_t > &weights, const std::vector< Matrix_t > &weightGradients) override |
| Update the weights, given the current weight gradients. | |
Protected Attributes | |
| Scalar_t | fEpsilon |
| The Smoothing term used to avoid division by zero. | |
| std::vector< std::vector< Matrix_t > > | fPastSquaredBiasGradients |
| The accumulation of the square of the past bias gradients associated with the deep net. | |
| std::vector< std::vector< Matrix_t > > | fPastSquaredBiasUpdates |
| The accumulation of the square of the past bias updates associated with the deep net. | |
| std::vector< std::vector< Matrix_t > > | fPastSquaredWeightGradients |
| The accumulation of the square of the past weight gradients associated with the deep net. | |
| std::vector< std::vector< Matrix_t > > | fPastSquaredWeightUpdates |
| The accumulation of the square of the past weight updates associated with the deep net. | |
| Scalar_t | fRho |
| The Rho constant used by the optimizer. | |
| std::vector< std::vector< Matrix_t > > | fWorkBiasTensor1 |
| working tensor used to keep a temporary copy of bias or bias gradients | |
| std::vector< std::vector< Matrix_t > > | fWorkBiasTensor2 |
| working tensor used to keep a temporary copy of bias or bias gradients | |
| std::vector< std::vector< Matrix_t > > | fWorkWeightTensor1 |
| working tensor used to keep a temporary copy of weights or weight gradients | |
| std::vector< std::vector< Matrix_t > > | fWorkWeightTensor2 |
| working tensor used to keep a temporary copy of weights or weight gradients | |
Protected Attributes inherited from TMVA::DNN::VOptimizer< Architecture_t, Layer_t, DeepNet_t > | |
| DeepNet_t & | fDeepNet |
| The reference to the deep net. | |
| size_t | fGlobalStep |
| The current global step count during training. | |
| Scalar_t | fLearningRate |
| The learning rate used for training. | |
#include <TMVA/DNN/Adadelta.h>
| using TMVA::DNN::TAdadelta< Architecture_t, Layer_t, DeepNet_t >::Matrix_t = typename Architecture_t::Matrix_t |
Definition at line 47 of file Adadelta.h.
| using TMVA::DNN::TAdadelta< Architecture_t, Layer_t, DeepNet_t >::Scalar_t = typename Architecture_t::Scalar_t |
Definition at line 48 of file Adadelta.h.
| TMVA::DNN::TAdadelta< Architecture_t, Layer_t, DeepNet_t >::TAdadelta | ( | DeepNet_t & | deepNet, |
| Scalar_t | learningRate = 1.0, | ||
| Scalar_t | rho = 0.95, | ||
| Scalar_t | epsilon = 1e-8 ) |
Constructor.
Definition at line 102 of file Adadelta.h.
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Destructor.
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Definition at line 82 of file Adadelta.h.
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Definition at line 87 of file Adadelta.h.
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Definition at line 88 of file Adadelta.h.
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Definition at line 93 of file Adadelta.h.
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Definition at line 94 of file Adadelta.h.
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Definition at line 84 of file Adadelta.h.
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Definition at line 85 of file Adadelta.h.
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Definition at line 90 of file Adadelta.h.
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Definition at line 91 of file Adadelta.h.
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Getters.
Definition at line 81 of file Adadelta.h.
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Update the biases, given the current bias gradients.
Implements TMVA::DNN::VOptimizer< Architecture_t, Layer_t, DeepNet_t >.
Definition at line 206 of file Adadelta.h.
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Update the weights, given the current weight gradients.
Implements TMVA::DNN::VOptimizer< Architecture_t, Layer_t, DeepNet_t >.
Definition at line 147 of file Adadelta.h.
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The Smoothing term used to avoid division by zero.
Definition at line 52 of file Adadelta.h.
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The accumulation of the square of the past bias gradients associated with the deep net.
Definition at line 55 of file Adadelta.h.
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The accumulation of the square of the past bias updates associated with the deep net.
Definition at line 60 of file Adadelta.h.
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The accumulation of the square of the past weight gradients associated with the deep net.
Definition at line 53 of file Adadelta.h.
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The accumulation of the square of the past weight updates associated with the deep net.
Definition at line 58 of file Adadelta.h.
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The Rho constant used by the optimizer.
Definition at line 51 of file Adadelta.h.
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working tensor used to keep a temporary copy of bias or bias gradients
Definition at line 63 of file Adadelta.h.
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working tensor used to keep a temporary copy of bias or bias gradients
Definition at line 65 of file Adadelta.h.
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working tensor used to keep a temporary copy of weights or weight gradients
Definition at line 62 of file Adadelta.h.
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working tensor used to keep a temporary copy of weights or weight gradients
Definition at line 64 of file Adadelta.h.