Attention Mechanisms And Their Applications To Complex Systems

ENTROPY(2021)

Cited 23|Views3
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Abstract
Deep learning models and graphics processing units have completely transformed the field of machine learning. Recurrent neural networks and long short-term memories have been successfully used to model and predict complex systems. However, these classic models do not perform sequential reasoning, a process that guides a task based on perception and memory. In recent years, attention mechanisms have emerged as a promising solution to these problems. In this review, we describe the key aspects of attention mechanisms and some relevant attention techniques and point out why they are a remarkable advance in machine learning. Then, we illustrate some important applications of these techniques in the modeling of complex systems.
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Key words
attention, deep learning, complex and dynamical systems, self-attention, neural networks, sequential reasoning
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