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Main Authors: Cao, Xuemei, Yang, Xin, Xia, Shuyin, Wang, Guoyin, Li, Tianrui
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.10253
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author Cao, Xuemei
Yang, Xin
Xia, Shuyin
Wang, Guoyin
Li, Tianrui
author_facet Cao, Xuemei
Yang, Xin
Xia, Shuyin
Wang, Guoyin
Li, Tianrui
contents This paper presents a novel framework for continual feature selection (CFS) in data preprocessing, particularly in the context of an open and dynamic environment where unknown classes may emerge. CFS encounters two primary challenges: the discovery of unknown knowledge and the transfer of known knowledge. To this end, the proposed CFS method combines the strengths of continual learning (CL) with granular-ball computing (GBC), which focuses on constructing a granular-ball knowledge base to detect unknown classes and facilitate the transfer of previously learned knowledge for further feature selection. CFS consists of two stages: initial learning and open learning. The former aims to establish an initial knowledge base through multi-granularity representation using granular-balls. The latter utilizes prior granular-ball knowledge to identify unknowns, updates the knowledge base for granular-ball knowledge transfer, reinforces old knowledge, and integrates new knowledge. Subsequently, we devise an optimal feature subset mechanism that incorporates minimal new features into the existing optimal subset, often yielding superior results during each period. Extensive experimental results on public benchmark datasets demonstrate our method's superiority in terms of both effectiveness and efficiency compared to state-of-the-art feature selection methods.
format Preprint
id arxiv_https___arxiv_org_abs_2403_10253
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Open Continual Feature Selection via Granular-Ball Knowledge Transfer
Cao, Xuemei
Yang, Xin
Xia, Shuyin
Wang, Guoyin
Li, Tianrui
Machine Learning
This paper presents a novel framework for continual feature selection (CFS) in data preprocessing, particularly in the context of an open and dynamic environment where unknown classes may emerge. CFS encounters two primary challenges: the discovery of unknown knowledge and the transfer of known knowledge. To this end, the proposed CFS method combines the strengths of continual learning (CL) with granular-ball computing (GBC), which focuses on constructing a granular-ball knowledge base to detect unknown classes and facilitate the transfer of previously learned knowledge for further feature selection. CFS consists of two stages: initial learning and open learning. The former aims to establish an initial knowledge base through multi-granularity representation using granular-balls. The latter utilizes prior granular-ball knowledge to identify unknowns, updates the knowledge base for granular-ball knowledge transfer, reinforces old knowledge, and integrates new knowledge. Subsequently, we devise an optimal feature subset mechanism that incorporates minimal new features into the existing optimal subset, often yielding superior results during each period. Extensive experimental results on public benchmark datasets demonstrate our method's superiority in terms of both effectiveness and efficiency compared to state-of-the-art feature selection methods.
title Open Continual Feature Selection via Granular-Ball Knowledge Transfer
topic Machine Learning
url https://arxiv.org/abs/2403.10253