How to create an attention layer for deep learning networks?

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Hello,
Can you please let me know how to create an attention layer for deep learning classification networks? I have a simple 1D convolutional neural network and I want to create a layer that focuses on special parts of a signal as an attention mechanism.
I have been working on the wav2vec MATLAB code recently, but the best I found is the multi-head attention manual calculation. Can we make it as a layer to be included for the trainNetwork function?
For example, this is my current network, which is from this example:
numFilters = 128;
filterSize = 5;
dropoutFactor = 0.005;
numBlocks = 4;
layer = sequenceInputLayer(numFeatures,Normalization="zerocenter",Name="input");
lgraph = layerGraph(layer);
outputName = layer.Name;
for i = 1:numBlocks
dilationFactor = 2^(i-1);
layers = [
convolution1dLayer(filterSize,numFilters,DilationFactor=dilationFactor,Padding="causal",Name="conv1_"+i)
layerNormalizationLayer
spatialDropoutLayer(dropoutFactor)
convolution1dLayer(filterSize,numFilters,DilationFactor=dilationFactor,Padding="causal")
layerNormalizationLayer
reluLayer
spatialDropoutLayer(dropoutFactor)
additionLayer(2,Name="add_"+i)];
% Add and connect layers.
lgraph = addLayers(lgraph,layers);
lgraph = connectLayers(lgraph,outputName,"conv1_"+i);
% Skip connection.
if i == 1
% Include convolution in first skip connection.
layer = convolution1dLayer(1,numFilters,Name="convSkip");
lgraph = addLayers(lgraph,layer);
lgraph = connectLayers(lgraph,outputName,"convSkip");
lgraph = connectLayers(lgraph,"convSkip","add_" + i + "/in2");
else
lgraph = connectLayers(lgraph,outputName,"add_" + i + "/in2");
end
% Update layer output name.
outputName = "add_" + i;
end
layers = [
globalMaxPooling1dLayer("Name",'gapl')
fullyConnectedLayer(numClasses,Name="fc")
softmaxLayer
classificationLayer('Classes',unique(Y_train),'ClassWeights',weights)];
lgraph = addLayers(lgraph,layers);
lgraph = connectLayers(lgraph,outputName,"gapl");
I appreciate your help!
regards,
Mohanad
  15 Commenti
mohd akmal masud
mohd akmal masud il 20 Ott 2023
% Define the attention layer
attentionLayer = attentionLayer('AttentionSize', attentionSize);
% Create the rest of your deep learning model
layers = [
imageInputLayer([inputImageSize])
convolution2dLayer(3, 64, 'Padding', 'same')
reluLayer
attentionLayer
fullyConnectedLayer(numClasses)
softmaxLayer
classificationLayer
];
% Create the deep learning network
net = layerGraph(layers);
% Visualize the network
plot(net);
健 李
健 李 il 6 Nov 2023
Dear Mohanad
Thank you very much for sharing your code. I tried running it in Matlab R2023a, but Matlab prompted: The function or variable 'attentionSize' is not recognized I don't know why this error occurred, is it related to my version?

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Risposta accettata

Samuel Somuyiwa
Samuel Somuyiwa il 24 Giu 2022
You can create an attention layer as a custom layer, similar to spatialDropoutLayer in the example you are using in your current network, and include it in the network that you are passing to trainNetwork. This doc page explains how to create a custom layer. You can use the Intermediate Layer Template in that doc page to start with.
If you uncomment the nnet.layer.Formattable in that template, you can copy, and modify where necessary, the code from the multihead attention function in wav2vec-2.0 on File Exchange and use it in the predict method of your custom layer. Note that you do not need to implement a backward method in this case. This doc page provides more information on how to create custom layers with formattable inputs.
If you have R2022b prerelease, you can use the (new) attention function instead of the multihead attention function in wav2vec-2.0 on File Exchange to implement the predict method of your layer. Type help attention on the command line to see the help text for the function.
  9 Commenti
jie huang
jie huang il 12 Gen 2023
Hi, I would like to ask you what to fill in the function layer = initialize(layer,layout) inside the custom layer template if I want to update the learnable parameters of the multi-headed attention mechanism in the layer?
Also, why is the input dimension different from the output dimension in the MATLAB documentation of version 2022b of the multihead self-attention mechanism?
Thank you for your answer.
MAHMOUD EID
MAHMOUD EID il 14 Mar 2023
Hi, can you provide an example of using attention layer in deep network for classifcation tasks using Matlab 2022 ?

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Più risposte (2)

kollikonda Ashok kumar
kollikonda Ashok kumar il 3 Mag 2023
I too want to know how to use attention layer in deep network for classification tasks..

Ayush Modi
Ayush Modi il 14 Mar 2024
Refer to the following MathWorks documentation as an example on how to use custom Attention layer for classification task:
  1. https://www.mathworks.com/help/deeplearning/ug/image-captioning-using-attention.html
  2. https://www.mathworks.com/help/deeplearning/ug/sequence-to-sequence-translation-using-attention.html
Hope this helps you get started!

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