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Ensemble Learning Based Classification Algorithm Recommendation

2021-01-15 07:14:51
Guangtao Wang, Qinbao Song, Xiaoyan Zhu

Abstract

Recommending appropriate algorithms to a classification problem is one of the most challenging issues in the field of data mining. The existing algorithm recommendation models are generally constructed on only one kind of meta-features by single learners. Considering that i) ensemble learners usually show better performance and ii) different kinds of meta-features characterize the classification problems in different viewpoints independently, and further the models constructed with different sets of meta-features will be complementary with each other and applicable for ensemble. This paper proposes an ensemble learning-based algorithm recommendation method. To evaluate the proposed recommendation method, extensive experiments with 13 well-known candidate classification algorithms and five different kinds of meta-features are conducted on 1090 benchmark classification problems. The results show the effectiveness of the proposed ensemble learning based recommendation method.

Abstract (translated)

URL

https://arxiv.org/abs/2101.05993

PDF

https://arxiv.org/pdf/2101.05993.pdf


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