Multi-label feature ranking with ensemble methods

被引:0
|
作者
Matej Petković
Sašo Džeroski
Dragi Kocev
机构
[1] Jožef Stefan Institute,
[2] Jožef Stefan International Postgraduate School,undefined
来源
Machine Learning | 2020年 / 109卷
关键词
Feature ranking; Multi-label classification; Ensemble-based methods; Predictive clustering trees;
D O I
暂无
中图分类号
学科分类号
摘要
In this paper, we propose three ensemble-based feature ranking scores for multi-label classification (MLC), which is a generalisation of multi-class classification where the classes are not mutually exclusive. Each of the scores (Symbolic, Genie3 and Random forest) can be computed from three different ensembles of predictive clustering trees: Bagging, Random forest and Extra trees. We extensively evaluate the proposed scores on 24 benchmark MLC problems, using 15 standard MLC evaluation measures. We determine the ranking quality saturation points in terms of the ensemble sizes, for each ranking-ensemble pair, and show that quality rankings can be computed really efficiently (typically 10 or 50 trees suffice). We also show that the proposed feature rankings are relevant and determine the most appropriate ensemble method for every feature ranking score. We empirically prove that the proposed feature ranking scores outperform current state-of-the-art methods in the quality of the rankings (for the majority of the evaluation measures), and in time efficiency. Finally, we determine the best performing feature ranking scores. Taking into account the quality of the rankings first and—in the case of ties—time efficiency, we identify the Genie3 feature ranking score as the optimal one.
引用
收藏
页码:2141 / 2159
页数:18
相关论文
共 50 条
  • [21] Ensemble feature selection for multi-label text classification: An intelligent order statistics approach
    Miri, Mohsen
    Dowlatshahi, Mohammad Bagher
    Hashemi, Amin
    Rafsanjani, Marjan Kuchaki
    Gupta, Brij B.
    Alhalabi, W.
    INTERNATIONAL JOURNAL OF INTELLIGENT SYSTEMS, 2022, 37 (12) : 11319 - 11341
  • [22] Multi-label feature selection via label relaxation
    Fan, Yuling
    Liu, Peizhong
    Liu, Jinghua
    APPLIED SOFT COMPUTING, 2025, 175
  • [23] Ensemble Multi-label Classification: A Comparative Study on Threshold Selection and Voting Methods
    Gharroudi, Ouadie
    Elghazel, Haytham
    Aussem, Alex
    2015 IEEE 27TH INTERNATIONAL CONFERENCE ON TOOLS WITH ARTIFICIAL INTELLIGENCE (ICTAI 2015), 2015, : 377 - 384
  • [24] Dynamic ensemble learning for multi-label classification
    Zhu, Xiaoyan
    Li, Jiaxuan
    Ren, Jingtao
    Wang, Jiayin
    Wang, Guangtao
    INFORMATION SCIENCES, 2023, 623 : 94 - 111
  • [25] Ranking based multi-label classification for sentiment analysis
    Chen, Dengbo
    Rong, Wenge
    Zhang, Jianfei
    Xiong, Zhang
    JOURNAL OF INTELLIGENT & FUZZY SYSTEMS, 2020, 39 (02) : 2177 - 2188
  • [26] A model for multi-label classification and ranking of learning objects
    Lopez, Vivian F.
    de la Prieta, Fernando
    Ogihara, Mitsunori
    Wong, Ding Ding
    EXPERT SYSTEMS WITH APPLICATIONS, 2012, 39 (10) : 8878 - 8884
  • [27] A Comparison of Multi-label Feature Selection Methods using the Problem Transformation Approach
    Spolaor, Newton
    Cherman, Everton Alvares
    Monard, Maria Carolina
    Lee, Huei Diana
    ELECTRONIC NOTES IN THEORETICAL COMPUTER SCIENCE, 2013, 292 : 135 - 151
  • [28] An Empirical Comparison Of Feature Selection Methods In Problem Transformation Multi-label Classification
    Rodriguez, J. M.
    Godoy, D.
    Zunino, A.
    IEEE LATIN AMERICA TRANSACTIONS, 2016, 14 (08) : 3784 - 3791
  • [29] Feature Selection for Hierarchical Multi-label Classification
    da Silva, Luan V. M.
    Cerri, Ricardo
    ADVANCES IN INTELLIGENT DATA ANALYSIS XIX, IDA 2021, 2021, 12695 : 196 - 208
  • [30] Multi-label Feature Transform for Image Classifications
    Wang, Hua
    Huang, Heng
    Ding, Chris
    COMPUTER VISION-ECCV 2010, PT IV, 2010, 6314 : 793 - 806