1. Transductive Multiview Modeling With Interpretable Rules, Matrix Factorization, and Cooperative Learning
- Author
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Wenhao Ying, Shitong Wang, Wei Zhang, Hongbin Shen, Jun Wang, Te Zhang, Xiaoqing Luo, Kup-Sze Choi, and Zhaohong Deng
- Subjects
Cooperative learning ,Dependency (UML) ,Computer science ,business.industry ,Collaborative learning ,Fuzzy control system ,Machine learning ,computer.software_genre ,Fuzzy logic ,Computer Science Applications ,Matrix decomposition ,Human-Computer Interaction ,Support vector machine ,ComputingMethodologies_PATTERNRECOGNITION ,Control and Systems Engineering ,Robustness (computer science) ,Learning ,Artificial intelligence ,Electrical and Electronic Engineering ,business ,computer ,Algorithms ,Software ,Information Systems - Abstract
Multiview fuzzy systems aim to deal with fuzzy modeling in multiview scenarios effectively and to obtain the interpretable model through multiview learning. However, current studies of multiview fuzzy systems still face several challenges, one of which is how to achieve efficient collaboration between multiple views when there are few labeled data. To address this challenge, this article explores a novel transductive multiview fuzzy modeling method. The dependency on labeled data is reduced by integrating transductive learning into the fuzzy model to simultaneously learn both the model and the labels using a novel learning criterion. Matrix factorization is incorporated to further improve the performance of the fuzzy model. In addition, collaborative learning between multiple views is used to enhance the robustness of the model. The experimental results indicate that the proposed method is highly competitive with other multiview learning methods.
- Published
- 2022
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