用模型遗忘方法提高生成类的增量学习性能

IF 2.9 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Taro Togo;Ren Togo;Keisuke Maeda;Takahiro Ogawa;Miki Haseyama
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引用次数: 0

摘要

本研究通过引入遗忘机制,提出了一种新的生成类增量学习(GCIL)方法,旨在动态管理类信息,以更好地适应流数据。GCIL是计算机视觉领域的研究热点之一,作为生成模型的持续学习方法之一,被认为是当今社会的重要任务之一。遗忘能力是一项至关重要的大脑功能,它通过选择性地丢弃不相关的信息来促进人类的持续学习。然而,在机器学习模型领域,有意遗忘的概念还没有得到广泛的研究。在本研究中,我们的目标是通过将遗忘机制纳入GCIL来弥合这一差距,从而研究它们对模型在持续学习中的学习能力的影响。通过我们的实验,我们发现整合遗忘机制显著提高了模型在获取新知识方面的表现,强调了策略遗忘在持续学习过程中的积极作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Generative Class Incremental Learning Performance With a Model Forgetting Approach
This study presents a novel approach to Generative Class Incremental Learning (GCIL) by introducing the forgetting mechanism, aimed at dynamically managing class information for better adaptation to streaming data. GCIL is one of the hot topics in the field of computer vision, and it is considered one of the important tasks in society as one of the continual learning approaches for generative models. The ability to forget is a crucial brain function that facilitates continual learning by selectively discarding less relevant information for humans. However, in the field of machine learning models, the concept of intentionally forgetting has not been extensively investigated. In this study, we aim to bridge this gap by incorporating the forgetting mechanisms into GCIL, thereby examining their impact on the models' ability to learn in continual learning. Through our experiments, we have found that integrating the forgetting mechanisms significantly enhances the models' performance in acquiring new knowledge, underscoring the positive role that strategic forgetting plays in the process of continual learning.
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来源期刊
CiteScore
5.30
自引率
0.00%
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审稿时长
22 weeks
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