robustness and understandability is the objective of classification modeling.Regarding instability and performance limitation of existing rule learning techniques
we introduce an ensemble classifier based on randomized neighborhood reduction and neighborhood covering reduction.A set of reducts are obtained with randomized attribute reduction.A collection of rule sets are derived from the reducts based on neighborhood covering reduction.And then the classification result is output by combining the classification decision of different rule sets.The experiment result shows that the proposed technique is better than or equal to other classifiers
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Ensemble Learning-Based Relay Selection Scheme in Full-Duplex Relay System for Secure Transmission
High Correct Recognition Rate Classifier Design with Appropriate Rejection Mechanism
Related Author
LIU Cheng-yu
YAN Fang
MA Jie
LI Yong-ming
WANG Pin
QIN Jian
MA Su-yang
DIAO Yu-xuan
Related Institution
School of Microelectronics and Communication Engineering, Chongqing University
Mine Digitization Engineering Research Center of the Ministry of Education
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Key Laboratory of Aerospace Information Security and Trusted Computing of the Ministry of Education, School of Cyber Science and Engineering, Wuhan University
Institute of Information Engineering, Chinese Academy of Sciences