Publication | Open Access
DropAttention: A Regularization Method for Fully-Connected Self-Attention Networks
33
Citations
20
References
2019
Year
Few-shot LearningConvolutional Neural NetworkCognitive ScienceEngineeringMachine LearningData ScienceSparse Neural NetworkSelf-supervised LearningAttention WeightsAutoencodersRecurrent LayerSpecific Dropout MethodDeep LearningVideo TransformerRecurrent Neural NetworkRegularization MethodSpeech Recognition
Variants dropout methods have been designed for the fully-connected layer, convolutional layer and recurrent layer in neural networks, and shown to be effective to avoid overfitting. As an appealing alternative to recurrent and convolutional layers, the fully-connected self-attention layer surprisingly lacks a specific dropout method. This paper explores the possibility of regularizing the attention weights in Transformers to prevent different contextualized feature vectors from co-adaption. Experiments on a wide range of tasks show that DropAttention can improve performance and reduce overfitting.
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