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Multi-layer heterogeneous ensemble with classifier and feature selection

Authors :
Nang Van Pham
Manh Truong Dang
Anh Vu Luong
Tien Thanh Nguyen
Alan Wee-Chung Liew
John McCall
Source :
GECCO
Publication Year :
2020
Publisher :
ACM, 2020.

Abstract

Deep Neural Networks have achieved many successes when applying to visual, text, and speech information in various domains. The crucial reasons behind these successes are the multi-layer architecture and the in-model feature transformation of deep learning models. These design principles have inspired other sub-fields of machine learning including ensemble learning. In recent years, there are some deep homogenous ensemble models introduced with a large number of classifiers in each layer. These models, thus, require a costly computational classification. Moreover, the existing deep ensemble models use all classifiers including unnecessary ones which can reduce the predictive accuracy of the ensemble. In this study, we propose a multi-layer ensemble learning framework called MUlti-Layer heterogeneous Ensemble System (MULES) to solve the classification problem. The proposed system works with a small number of heterogeneous classifiers to obtain ensemble diversity, therefore being efficiency in resource usage. We also propose an Evolutionary Algorithm-based selection method to select the subset of suitable classifiers and features at each layer to enhance the predictive performance of MULES. The selection method uses NSGA-II algorithm to optimize two objectives concerning classification accuracy and ensemble diversity. Experiments on 33 datasets confirm that MULES is better than a number of well-known benchmark algorithms.

Details

Database :
OpenAIRE
Journal :
Proceedings of the 2020 Genetic and Evolutionary Computation Conference
Accession number :
edsair.doi...........df7982dd93cc3079c27fdc889981fe84
Full Text :
https://doi.org/10.1145/3377930.3389832