Using meta-learning for multi-target regression

被引:9
|
作者
Aguiar, Gabriel J. [1 ]
Santana, Everton J. [2 ]
de Carvalho, Andre C. P. F. L. [4 ]
Barbon Junior, Sylvio [3 ]
机构
[1] Virginia Commonwealth Univ, Coll Engn, Richmond, VA USA
[2] Pontif Catholic Univ Parana PUCPR, Software Engn Dept, Londrina, Parana, Brazil
[3] Londrina State Univ UEL, Dept Comp Sci, Londrina, Parana, Brazil
[4] Univ Sao Paulo, Inst Math & Comp Sci, BR-13566590 Sao Carlos, SP, Brazil
基金
巴西圣保罗研究基金会;
关键词
Meta-learning; Multi-output; Machine learning; Regression; Support vector machine; Random forest; ALGORITHM SELECTION; ENSEMBLES; TREES;
D O I
10.1016/j.ins.2021.11.003
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Choosing the most suitable algorithm to perform a machine learning task for a new problem is a recurrent and complex task. In multi-target regression tasks, when problem transformation methods are applied, this choice is even harder. The reason is the need to simultaneously choose the problem transformation method and the base learning algorithm. This work investigates how to bridge the gap of method/base learner recommendation for problems with multiple outputs. In meta-learning experiments, we use a large number of multi-target regression datasets to investigate whether using meta-learning can provide good recommendations. To do this, we compared the meta-models induced by 3 different ML algorithms, including three variations for each of them, and selected 58 meta-features that we believe are relevant for extracting good dataset descriptions for the meta-learning process. In the experimental results, the meta-models outperformed the baselines (Majority and Random) by recommending the most suitable solution for multi-target regression (for the transformation method and base-learner) with high predictive performance, including real-world applications. The meta-features and the relation between the transformation method and base-learner provided important insights regarding the optimal problem transformation method. Furthermore, when comparing the application of algorithm adaptation and problem transformation methods, our meta-learning proposal was capable of statistically overcoming all competitors, which resulted in a predictive performance using the best choice per problem. (c) 2021 Elsevier Inc. All rights reserved.
引用
收藏
页码:665 / 684
页数:20
相关论文
共 50 条
  • [1] An Empirical Comparison on Multi-Target Regression Learning
    Xi, Xuefeng
    Sheng, Victor S.
    Sun, Binqi
    Wang, Lei
    Hu, Fuyuan
    [J]. CMC-COMPUTERS MATERIALS & CONTINUA, 2018, 56 (02): : 185 - 198
  • [2] Learning local instance correlations for multi-target regression
    Kaiwei Sun
    Mingxin Deng
    Hang Li
    Jin Wang
    Xin Deng
    [J]. Applied Intelligence, 2021, 51 : 6124 - 6135
  • [3] Learning local instance correlations for multi-target regression
    Sun, Kaiwei
    Deng, Mingxin
    Li, Hang
    Wang, Jin
    Deng, Xin
    [J]. APPLIED INTELLIGENCE, 2021, 51 (08) : 6124 - 6135
  • [4] Predicting rice phenotypes with meta and multi-target learning
    Oghenejokpeme I. Orhobor
    Nickolai N. Alexandrov
    Ross D. King
    [J]. Machine Learning, 2020, 109 : 2195 - 2212
  • [5] Predicting rice phenotypes with meta and multi-target learning
    Orhobor, Oghenejokpeme, I
    Alexandrov, Nickolai N.
    King, Ross D.
    [J]. MACHINE LEARNING, 2020, 109 (11) : 2195 - 2212
  • [6] Conformal multi-target regression using neural networks
    Messoudi, Soundouss
    Destercke, Sebastien
    Rousseau, Sylvain
    [J]. CONFORMAL AND PROBABILISTIC PREDICTION AND APPLICATIONS, VOL 128, 2020, 128 : 65 - 83
  • [7] Outlier Robust Extreme Machine Learning for multi-target regression
    Souza da Silva, Bruno Legora
    Inaba, Fernando Kentaro
    Teatini Salles, Evandro Ottoni
    Ciarelli, Patrick Marques
    [J]. EXPERT SYSTEMS WITH APPLICATIONS, 2020, 140
  • [8] Meta-learning for Mixed Linear Regression
    Kong, Weihao
    Somani, Raghav
    Song, Zhao
    Kakade, Sham
    Oh, Sewoong
    [J]. INTERNATIONAL CONFERENCE ON MACHINE LEARNING, VOL 119, 2020, 119
  • [9] Meta-learning Convolutional Neural Architectures for Multi-target Concrete Defect Classification with the COncrete DEfect BRidge IMage Dataset
    Mundt, Martin
    Majumder, Sagnik
    Murali, Sreenivas
    Panetsos, Panagiotis
    Ramesh, Visvanathan
    [J]. 2019 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR 2019), 2019, : 11188 - 11197
  • [10] Feature ranking for multi-target regression
    Petkovic, Matej
    Kocev, Dragi
    Dzeroski, Saso
    [J]. MACHINE LEARNING, 2020, 109 (06) : 1179 - 1204