中文版 | English
Title

Multi-objective Evolutionary Instance Selection for Multi-label Classification

Author
Corresponding AuthorQian, Chao
DOI
Publication Years
2022
Conference Name
19th Pacific Rim International Conference on Artificial Intelligence, PRICAI 2022
ISSN
0302-9743
EISSN
1611-3349
ISBN
9783031208614
Source Title
Volume
13629 LNCS
Pages
548-561
Conference Date
November 10, 2022 - November 13, 2022
Conference Place
Shangai, China
Publisher
Abstract
Multi-label classification is an important topic in machine learning, where each instance can be classified into more than one category, i.e., have a subset of labels instead of only one. Among existing methods, ML-kNN [25], the direct extension of k-nearest neighbors algorithm to the multi-label scenario, has received much attention due to its conciseness, great interpretability, and good performance. However, ML-kNN usually suffers from a terrible storage cost since all training instances need to be saved in the memory. To address this issue, a natural way is instance selection, intending to save the important instances while deleting the redundant ones. However, previous instance selection methods mainly focus on the single-label scenario, which may have a poor performance when adapted to the multi-label scenario. Recently, few works begin to consider the multi-label scenario, but their performance is limited due to the inapposite modeling. In this paper, we propose to formulate the instance selection problem for ML-kNN as a natural bi-objective optimization problem that considers the accuracy and the number of retained instances simultaneously, and adapt NSGA-II to solve it. Experiments on six real-world data sets show that our proposed method can achieve both not worse prediction accuracy and significantly better compression ratio, compared with state-of-the-art methods.
© 2022, The Author(s), under exclusive license to Springer Nature Switzerland AG.
SUSTech Authorship
Others
Language
English
Indexed By
Funding Project
by the National Science Foundation of China
WOS Accession No
WOS:000897031800040
EI Accession Number
20225213294976
EI Keywords
Classification (of information) ; Digital storage ; Evolutionary algorithms ; Learning algorithms ; Nearest neighbor search
ESI Classification Code
Information Theory and Signal Processing:716.1 ; Data Storage, Equipment and Techniques:722.1 ; Machine Learning:723.4.2 ; Information Sources and Analysis:903.1 ; Optimization Techniques:921.5
Data Source
EV Compendex
Citation statistics
Cited Times [WOS]:0
Document TypeConference paper
Identifierhttp://kc.sustech.edu.cn/handle/2SGJ60CL/519748
DepartmentDepartment of Computer Science and Engineering
Affiliation
1.State Key Laboratory for Novel Software Technology, Nanjing University, Nanjing; 210023, China
2.Department of Computer Science and Engineering, Southern University of Science and Technology, Shenzhen; 518055, China
Recommended Citation
GB/T 7714
Liu, Dingming,Shang, Haopu,Hong, Wenjing,et al. Multi-objective Evolutionary Instance Selection for Multi-label Classification[C]:Springer Science and Business Media Deutschland GmbH,2022:548-561.
Files in This Item:
There are no files associated with this item.
Related Services
Recommend this item
Bookmark
Usage statistics
Export to Endnote
Export to Excel
Export to Csv
Altmetrics Score
Google Scholar
Similar articles in Google Scholar
[Liu, Dingming]'s Articles
[Shang, Haopu]'s Articles
[Hong, Wenjing]'s Articles
Baidu Scholar
Similar articles in Baidu Scholar
[Liu, Dingming]'s Articles
[Shang, Haopu]'s Articles
[Hong, Wenjing]'s Articles
Bing Scholar
Similar articles in Bing Scholar
[Liu, Dingming]'s Articles
[Shang, Haopu]'s Articles
[Hong, Wenjing]'s Articles
Terms of Use
No data!
Social Bookmark/Share
No comment.

Items in the repository are protected by copyright, with all rights reserved, unless otherwise indicated.