Joint sparse learning for classification ensemble

Lin Li, Fei Tong, Rustam Stolkin, Jinwen Hu, Feng Yang

科研成果: 书/报告/会议事项章节会议稿件同行评审

摘要

Ensemble methods use multiple classifiers to achieve better decisions than could be achieved using any of the constituent classifiers alone. However, both theoretical and experimental evidence have shown that very large ensembles are not necessarily superior, and small ensembles can often achieve better results. In this paper, we show how to combine a set of weak classifiers into a robust ensemble by using a joint sparse representation method, which assigns a sparse coefficient vector to the decision of each classifier. The sparse vector contains many zero entries, and thus the final ensemble only employs a small number of classifiers, corresponding to non-zero entries. Training data are partitioned into several sub-groups to generate sub-underdetermined systems. The joint sparse method enables these sub-groups to then share their information about individual classifiers, to obtain an improved overall classification. Partitioning the training dataset into subgroups makes the proposed joint sparse ensemble method parallelizable, making it suitable for large scale problems. In contrast, previous work on sparse approaches to ensemble learning was limited to datasets smaller than the number of classifiers. Two different strategies are described for generating the sub-underdetermined systems, and experiments show these to be effective when tested with two different data manipulation methods. Experiments evaluate the performance of the joint sparse ensemble learning method in comparison to five other state-of-the-art methods from the literature, each designed to train small and efficient ensembles. Results suggest that joint sparse ensemble learning outperforms other algorithms on most datasets.

源语言英语
主期刊名2017 13th IEEE International Conference on Control and Automation, ICCA 2017
出版商IEEE Computer Society
1043-1048
页数6
ISBN(电子版)9781538626795
DOI
出版状态已出版 - 4 8月 2017
活动13th IEEE International Conference on Control and Automation, ICCA 2017 - Ohrid, 马其顿,前南斯拉夫共和国
期限: 3 7月 20176 7月 2017

出版系列

姓名IEEE International Conference on Control and Automation, ICCA
ISSN(印刷版)1948-3449
ISSN(电子版)1948-3457

会议

会议13th IEEE International Conference on Control and Automation, ICCA 2017
国家/地区马其顿,前南斯拉夫共和国
Ohrid
时期3/07/176/07/17

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