人类多任务处理
计算机科学
粒子群优化
人工智能
特征选择
进化算法
趋同(经济学)
机器学习
预处理器
面子(社会学概念)
任务(项目管理)
进化计算
特征(语言学)
工程类
哲学
社会学
经济增长
经济
认知心理学
系统工程
语言学
社会科学
心理学
作者
Ke Chen,Bing Xue,Mengjie Zhang,Fengyu Zhou
标识
DOI:10.1109/tevc.2021.3100056
摘要
Feature selection (FS) is an important preprocessing technique for improving the quality of feature sets in many practical applications. Particle swarm optimization (PSO) has been widely used for FS due to being efficient and easy to implement. However, when dealing with high-dimensional data, most of the existing PSO-based FS approaches face the problems of falling into local optima and high-computational cost. Evolutionary multitasking is an effective paradigm to enhance global search capability and accelerate convergence by knowledge transfer among related tasks. Inspired by evolutionary multitasking, this article proposes a multitasking PSO approach for high-dimensional FS. The approach converts a high-dimensional FS task into several related low-dimensional FS tasks, then finds an optimal feature subset by knowledge transfer between these low-dimensional FS tasks. Specifically, a novel task generation strategy based on the importance of features is developed, which can generate highly related tasks from a dataset adaptively. In addition, a new knowledge transfer mechanism is presented, which can effectively implement positive knowledge transfer among related tasks. The results demonstrate that the proposed method can evolve a feature subset with higher classification accuracy in a shorter time than other state-of-the-art FS methods on high-dimensional classification.
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