THE DISCRIMINATION OF LEARNING STYLES BY BAYES-BASED STATISTICS: AN EXTENDED STUDY ON ILS SYSTEM

Yanping Jing, Bo Li, Na Chen, Xiaofeng Li, Jie Hu, and Feng Zhu

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