Feature ranking for multi-target regression

被引:43
|
作者
Petkovic, Matej [1 ,2 ]
Kocev, Dragi [1 ,2 ]
Dzeroski, Saso [1 ,2 ]
机构
[1] Jozef Stefan Inst, Jamova 39, Ljubljana 1000, Slovenia
[2] Jozef Stefan Int Postgrad Sch, Jamova 39, Ljubljana 1000, Slovenia
关键词
Feature ranking; Multi target regression; Tree based methods; Relief; ENSEMBLES; TREES;
D O I
10.1007/s10994-019-05829-8
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In this work, we address the task of feature ranking for multi-target regression (MTR). The task of MTR concerns problems with multiple continuous dependent/target variables, where the goal is to learn a model for predicting all of them simultaneously. This task is receiving an increasing attention from the research community, but performing feature ranking in the context of MTR has not been studied thus far. Here, we study two groups of feature ranking scores for MTR: scores (Symbolic, Genie3 and Random Forest score) based on ensembles (bagging, random forests, extra trees) of predictive clustering trees, and a score derived as an extension of the RReliefF method. We also propose a generic data-transformation approach to MTR feature ranking and thus have two versions of each score. For both groups of feature ranking scores, we analyze their theoretical computational complexity. For the extension of the RReliefF method, we additionally derive some theoretical properties of the scores. Next, we extensively evaluate the scores on 24 benchmark MTR datasets, in terms of the quality of the ranking and the computational complexity of producing it. The results identify the parameters that influence the quality of the rankings, reveal that both groups of methods produce relevant feature rankings, and show that the Symbolic and Genie3 score, coupled with random forest ensembles, yield the best rankings.
引用
收藏
页码:1179 / 1204
页数:26
相关论文
共 50 条
  • [1] Feature ranking for multi-target regression
    Matej Petković
    Dragi Kocev
    Sašo Džeroski
    [J]. Machine Learning, 2020, 109 : 1179 - 1204
  • [2] Localized Feature Ranking approach for Multi-Target Regression
    Bertrand, Hugo
    Elghazel, Haytham
    Masmoudi, Sahar
    Coquery, Emmanuel
    Hacid, Mohand-Said
    [J]. 2022 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2022,
  • [3] Feature Ranking for Multi-target Regression with Tree Ensemble Methods
    Petkovic, Matej
    Dzeroski, Sao
    Kocev, Dragi
    [J]. DISCOVERY SCIENCE, DS 2017, 2017, 10558 : 171 - 185
  • [4] An ensemble-based semi-supervised feature ranking for multi-target regression problems☆
    Adiyeke, Esra
    Baydogan, Mustafa Gokce
    [J]. PATTERN RECOGNITION LETTERS, 2021, 148 : 36 - 42
  • [5] Multi-Target Regression with Rule Ensembles
    Aho, Timo
    Zenko, Bernard
    Dzeroski, Saso
    Elomaa, Tapio
    [J]. JOURNAL OF MACHINE LEARNING RESEARCH, 2012, 13 : 2367 - 2407
  • [6] Rule Ensembles for Multi-Target Regression
    Aho, Timo
    Zenko, Bernard
    Dzeroski, Saso
    [J]. 2009 9TH IEEE INTERNATIONAL CONFERENCE ON DATA MINING, 2009, : 21 - +
  • [7] Benchmarking multi-target regression methods
    Mastelini, Saulo Martiello
    Santana, Everton Jose
    Turrisi da Costa, Victor G.
    Barbon, Sylvio, Jr.
    [J]. 2018 7TH BRAZILIAN CONFERENCE ON INTELLIGENT SYSTEMS (BRACIS), 2018, : 396 - 401
  • [8] MTBR: Multi-Target Boosting for Regression
    Lin, Sangdi
    Azarnoush, Bahareh
    Runger, George
    [J]. IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2021, 33 (02) : 626 - 636
  • [9] Conditionally Decorrelated Multi-Target Regression
    Yazar, Orhan
    Elghazel, Haytham
    Hacid, Mohand-Said
    Castin, Nathalie
    [J]. NEURAL INFORMATION PROCESSING (ICONIP 2019), PT II, 2019, 11954 : 445 - 457
  • [10] Multi-target sparse regression with instance and target correlations
    He, Du-Bo
    Sun, Sheng-Xiang
    [J]. Kongzhi yu Juece/Control and Decision, 2024, 39 (05): : 1478 - 1486