layer_types.hpp
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1 
12 #ifndef MLPACK_METHODS_ANN_LAYER_LAYER_TYPES_HPP
13 #define MLPACK_METHODS_ANN_LAYER_LAYER_TYPES_HPP
14 
15 #include <boost/variant.hpp>
16 
17 // Layer modules.
42 
43 // Convolution modules.
47 
48 // Loss function modules.
50 
51 namespace mlpack {
52 namespace ann {
53 
54 template<typename InputDataType, typename OutputDataType> class BatchNorm;
55 template<typename InputDataType, typename OutputDataType> class DropConnect;
56 template<typename InputDataType, typename OutputDataType> class Glimpse;
57 template<typename InputDataType, typename OutputDataType> class LayerNorm;
58 template<typename InputDataType, typename OutputDataType> class Linear;
59 template<typename InputDataType, typename OutputDataType> class LinearNoBias;
60 template<typename InputDataType, typename OutputDataType> class LSTM;
61 template<typename InputDataType, typename OutputDataType> class GRU;
62 template<typename InputDataType, typename OutputDataType> class FastLSTM;
63 template<typename InputDataType, typename OutputDataType> class VRClassReward;
64 template<typename InputDataType, typename OutputDataType> class Concatenate;
65 
66 template<typename InputDataType,
67  typename OutputDataType
68 >
70 
71 template<typename InputDataType,
72  typename OutputDataType,
73  typename... CustomLayers
74 >
75 class AddMerge;
76 
77 template<typename InputDataType,
78  typename OutputDataType,
79  bool residual,
80  typename... CustomLayers
81 >
82 class Sequential;
83 
84 template<typename InputDataType,
85  typename OutputDataType,
86  typename... CustomLayers
87 >
88 class Recurrent;
89 
90 template<typename InputDataType,
91  typename OutputDataType,
92  typename... CustomLayers
93 >
94 class Concat;
95 
96 template<
97  typename OutputLayerType,
98  typename InputDataType,
99  typename OutputDataType
100 >
101 class ConcatPerformance;
102 
103 template<
104  typename ForwardConvolutionRule,
105  typename BackwardConvolutionRule,
106  typename GradientConvolutionRule,
107  typename InputDataType,
108  typename OutputDataType
109 >
110 class Convolution;
111 
112 template<
113  typename ForwardConvolutionRule,
114  typename BackwardConvolutionRule,
115  typename GradientConvolutionRule,
116  typename InputDataType,
117  typename OutputDataType
118 >
120 
121 template<
122  typename ForwardConvolutionRule,
123  typename BackwardConvolutionRule,
124  typename GradientConvolutionRule,
125  typename InputDataType,
126  typename OutputDataType
127 >
128 class AtrousConvolution;
129 
130 template<
131  typename InputDataType,
132  typename OutputDataType
133 >
135 
136 template<typename InputDataType,
137  typename OutputDataType,
138  typename... CustomLayers
139 >
141 
142 template <typename... CustomLayers>
143 using LayerTypes = boost::variant<
149  arma::mat, arma::mat>*,
160  arma::mat, arma::mat>*,
163  NaiveConvolution<FullConvolution>,
164  NaiveConvolution<ValidConvolution>, arma::mat, arma::mat>*,
166  NaiveConvolution<FullConvolution>,
167  NaiveConvolution<ValidConvolution>, arma::mat, arma::mat>*,
200  CustomLayers*...
201 >;
202 
203 } // namespace ann
204 } // namespace mlpack
205 
206 #endif
Implementation of the variance reduced classification reinforcement layer.
Definition: layer_types.hpp:63
Implementation of the Add module class.
Definition: add.hpp:34
Implementation of the Concatenate module class.
Definition: concatenate.hpp:36
Implementation of the log softmax layer.
Definition: log_softmax.hpp:36
Implementation of the AddMerge module class.
Definition: add_merge.hpp:42
.hpp
Definition: add_to_po.hpp:21
The FlexibleReLU activation function, defined by.
Implementation of the Transposed Convolution class.
Implementation of the reinforce normal layer.
Implementation of the Linear layer class.
Definition: layer_types.hpp:58
The LeakyReLU activation function, defined by.
Definition: leaky_relu.hpp:44
This class implements the Recurrent Model for Visual Attention, using a variety of possible layer imp...
Implementation of the Convolution class.
Definition: convolution.hpp:46
Implementation of the MeanPooling.
Implementation of the Reparametrization layer class.
Definition: layer_types.hpp:69
Implementation of the Join module class.
Definition: join.hpp:33
Implementation of the concat performance class.
The Hard Tanh activation function, defined by.
Definition: hard_tanh.hpp:49
The select module selects the specified column from a given input matrix.
Definition: select.hpp:32
Implementation of the negative log likelihood layer.
The PReLU activation function, defined by (where alpha is trainable)
Implementation of the base layer.
Definition: base_layer.hpp:49
boost::variant< Add< arma::mat, arma::mat > *, AddMerge< arma::mat, arma::mat > *, AtrousConvolution< NaiveConvolution< ValidConvolution >, NaiveConvolution< FullConvolution >, NaiveConvolution< ValidConvolution >, arma::mat, arma::mat > *, BaseLayer< LogisticFunction, arma::mat, arma::mat > *, BaseLayer< IdentityFunction, arma::mat, arma::mat > *, BaseLayer< TanhFunction, arma::mat, arma::mat > *, BaseLayer< RectifierFunction, arma::mat, arma::mat > *, BaseLayer< SoftplusFunction, arma::mat, arma::mat > *, BatchNorm< arma::mat, arma::mat > *, BilinearInterpolation< arma::mat, arma::mat > *, Concat< arma::mat, arma::mat > *, Concatenate< arma::mat, arma::mat > *, ConcatPerformance< NegativeLogLikelihood< arma::mat, arma::mat >, arma::mat, arma::mat > *, Constant< arma::mat, arma::mat > *, Convolution< NaiveConvolution< ValidConvolution >, NaiveConvolution< FullConvolution >, NaiveConvolution< ValidConvolution >, arma::mat, arma::mat > *, TransposedConvolution< NaiveConvolution< ValidConvolution >, NaiveConvolution< FullConvolution >, NaiveConvolution< ValidConvolution >, arma::mat, arma::mat > *, DropConnect< arma::mat, arma::mat > *, Dropout< arma::mat, arma::mat > *, AlphaDropout< arma::mat, arma::mat > *, ELU< arma::mat, arma::mat > *, FlexibleReLU< arma::mat, arma::mat > *, Glimpse< arma::mat, arma::mat > *, HardTanH< arma::mat, arma::mat > *, Join< arma::mat, arma::mat > *, LayerNorm< arma::mat, arma::mat > *, LeakyReLU< arma::mat, arma::mat > *, Linear< arma::mat, arma::mat > *, LinearNoBias< arma::mat, arma::mat > *, LogSoftMax< arma::mat, arma::mat > *, Lookup< arma::mat, arma::mat > *, LSTM< arma::mat, arma::mat > *, GRU< arma::mat, arma::mat > *, FastLSTM< arma::mat, arma::mat > *, MaxPooling< arma::mat, arma::mat > *, MeanPooling< arma::mat, arma::mat > *, MultiplyConstant< arma::mat, arma::mat > *, MultiplyMerge< arma::mat, arma::mat > *, NegativeLogLikelihood< arma::mat, arma::mat > *, PReLU< arma::mat, arma::mat > *, Recurrent< arma::mat, arma::mat > *, RecurrentAttention< arma::mat, arma::mat > *, ReinforceNormal< arma::mat, arma::mat > *, Reparametrization< arma::mat, arma::mat > *, Select< arma::mat, arma::mat > *, Sequential< arma::mat, arma::mat, false > *, Sequential< arma::mat, arma::mat, true > *, Subview< arma::mat, arma::mat > *, VRClassReward< arma::mat, arma::mat > *, CustomLayers *... > LayerTypes
Implementation of the Concat class.
Definition: concat.hpp:44
Implementation of the LSTM module class.
Definition: layer_types.hpp:60
Declaration of the Layer Normalization class.
Definition: layer_norm.hpp:65
Implementation of the Lookup class.
Definition: lookup.hpp:35
Implementation of the subview layer.
Definition: subview.hpp:34
Implementation of the MultiplyMerge module class.
Implementation of the LinearNoBias class.
Definition: layer_types.hpp:59
Computes the two-dimensional convolution.
An implementation of a gru network layer.
Definition: gru.hpp:57
The dropout layer is a regularizer that randomly with probability &#39;ratio&#39; sets input values to zero a...
Definition: dropout.hpp:52
The glimpse layer returns a retina-like representation (down-scaled cropped images) of increasing sca...
Definition: glimpse.hpp:87
The DropConnect layer is a regularizer that randomly with probability ratio sets the connection value...
Definition: dropconnect.hpp:62
Implementation of the multiply constant layer.
The alpha - dropout layer is a regularizer that randomly with probability &#39;ratio&#39; sets input values t...
Declaration of the Batch Normalization layer class.
Definition: batch_norm.hpp:56
Implementation of the RecurrentLayer class.
Definition: layer_types.hpp:88
Implementation of the Sequential class.
Definition: layer_types.hpp:82
Implementation of the constant layer.
Definition: constant.hpp:34
Implementation of the MaxPooling layer.
Definition: max_pooling.hpp:52
The ELU activation function, defined by.
Definition: elu.hpp:109
Definition and Implementation of the Bilinear Interpolation Layer.
An implementation of a faster version of the Fast LSTM network layer.
Definition: fast_lstm.hpp:61
Implementation of the Atrous Convolution class.