基于注意力的图像分类进化方法

Ajay Prem, Anirudh Joshi, Haritha Madana, Jaywanth J, Arti Arya
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引用次数: 1

摘要

最近,进化算法已经获得了牵引力,因为它们能够为给定的数据集产生最先进的深度学习架构,尽管它们需要大量的计算资源,但由于设计深度学习架构所涉及的复杂性,它们是一个被大量研究的领域。目前,所有可用的进化方法都没有纳入注意机制,而注意机制是一种被证明可以提高图像分类和语言模型性能的技术。本文提出了一种结合卷积块注意模块的神经进化技术用于图像分类。随着技术的进步,不可避免地会有巨大的进步,导致更便宜、更可用的计算,使进化方法成为开发特定任务深度学习模型的有前途的途径。与之前的方法相比,该方法使用的参数更少,从而实现了87.44%的高适应度的拓扑结构。尽管这种方法只进化了几代,但与大多数过去的方法相比,它的健康得分更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attention Based Evolutionary Approach for Image Classification
Lately, evolutionary algorithms have gained traction due to their ability to produce state-of-the-art deep learning architectures for a given data set, even though they require considerable amount of compute resources, they are a heavily researched domain because of the complexities involved in designing deep learning architectures. Currently, none of the evolutionary approaches available have incorporated the attention mechanism, which is a proven technique to improve the performance of image classification and language models. This paper posits a neuroevolutionary technique coupled with the use of Convolution Block Attention Module for image classification. As technology progresses, it’s inevitable that there will be massive advancements leading to cheaper and more available computing making evolutionary approaches a promising avenue to develop task specific deep learning models. The proposed approach evolves a topology that achieves a high fitness of 87.44%, using fewer parameters as compared to previous approaches. This results in a superior fitness score compared to most past approaches, despite being evolved for just few generations.
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