A General Survey on Attention Mechanisms in Deep Learning

Authors: Gianni Brauwers, Flavius Frasincar

IEEE Transactions on Knowledge and Data Engineering (TKDE), 2021
20 pages, 11 figures

Abstract: Attention is an important mechanism that can be employed for a variety of deep learning models across many different domains and tasks. This survey provides an overview of the most important attention mechanisms proposed in the literature. The various attention mechanisms are explained by means of a framework consisting of a general attention model, uniform notation, and a comprehensive taxonomy of attention mechanisms. Furthermore, the various measures for evaluating attention models are reviewed, and methods to characterize the structure of attention models based on the proposed framework are discussed. Last, future work in the field of attention models is considered.

Submitted to arXiv on 27 Mar. 2022

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