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Hierarchical Convolutional Attention Networks for Text Classification

2018-07-01WS 2018Unverified0· sign in to hype

Shang Gao, Arvind Ramanathan, Georgia Tourassi

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Abstract

Recent work in machine translation has demonstrated that self-attention mechanisms can be used in place of recurrent neural networks to increase training speed without sacrificing model accuracy. We propose combining this approach with the benefits of convolutional filters and a hierarchical structure to create a document classification model that is both highly accurate and fast to train -- we name our method Hierarchical Convolutional Attention Networks. We demonstrate the effectiveness of this architecture by surpassing the accuracy of the current state-of-the-art on several classification tasks while being twice as fast to train.

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