Back to Search Start Over

On the Dynamics of Training Attention Models

Authors :
Lu, Haoye
Mao, Yongyi
Nayak, Amiya
Lu, Haoye
Mao, Yongyi
Nayak, Amiya
Publication Year :
2020

Abstract

The attention mechanism has been widely used in deep neural networks as a model component. By now, it has become a critical building block in many state-of-the-art natural language models. Despite its great success established empirically, the working mechanism of attention has not been investigated at a sufficient theoretical depth to date. In this paper, we set up a simple text classification task and study the dynamics of training a simple attention-based classification model using gradient descent. In this setting, we show that, for the discriminative words that the model should attend to, a persisting identity exists relating its embedding and the inner product of its key and the query. This allows us to prove that training must converge to attending to the discriminative words when the attention output is classified by a linear classifier. Experiments are performed, which validate our theoretical analysis and provide further insights.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1228446966
Document Type :
Electronic Resource