IEICE Transactions on Communications
Online ISSN : 1745-1345
Print ISSN : 0916-8516

この記事には本公開記事があります。本公開記事を参照してください。
引用する場合も本公開記事を引用してください。

Dynamic Ensemble Selection Based on Rough Set Reduction and Cluster Matching
Ying∼Chun CHENOu LIYu SUN
著者情報
ジャーナル 認証あり 早期公開

論文ID: 2017EBP3441

この記事には本公開記事があります。
詳細
抄録

Ensemble learning is widely used in the field of sensor network monitoring and target identification. To improve the generalization ability and classification precision of ensemble learning, we first propose an approximate attribute reduction algorithm based on rough sets in this paper. The reduction algorithm uses mutual information to measure attribute importance and introduces a correction coefficient and an approximation parameter. Based on a random sampling strategy, we use the approximate attribute reduction algorithm to implement the multi-modal sample space perturbation. To further reduce the ensemble size and realize a dynamic subset of base classifiers that best matches the test sample, we define a similarity parameter between the test samples and training sample sets that takes the similarity and number of the training samples into consideration. We then propose a k-means clustering-based dynamic ensemble selection algorithm. Simulations show that the multi-modal perturbation method effectively selects important attributes and reduces the in uence of noise on the classification results. The classification precision and runtime of experiments demonstrate the effectiveness of the proposed dynamic ensemble selection algorithm.

著者関連情報
© 2018 The Institute of Electronics, Information and Communication Engineers
feedback
Top