Using AdaBoost-based Multiple Functional Neural Fuzzy Classifiers Fusion for Classification Applications

Jyun Yu Jhang, Chin Ling Lee, Cheng Jian Lin*, Chin Teng Lin, Kuu-Young Young

*此作品的通信作者

研究成果: Conference article同行評審

摘要

In this study, two intelligent classifiers, the AdaBoost-based incremental functional neural fuzzy classifier (AIFNFC) and the AdaBoost-based fixed functional neural fuzzy classifier (AFFNFC), are proposed for solving the classification problems. The AIFNFC approach will increase the amount of functional neural fuzzy classifiers based on the corresponding error during the training phase; while the AFNFC approach is equipped with a fixed amount of functional neural fuzzy classifiers. Then, the weights of AdaBoost procedure are assigned for classifiers. The proposed methods are applied to different classification benchmarks. Results of this study demonstrate the effectiveness of the proposed AIFNFC and AFFNFC methods.

原文English
文章編號05004
期刊MATEC Web of Conferences
201
DOIs
出版狀態Published - 14 9月 2018
事件3rd International Conference on Inventions, ICI 2017 - Sun Moon Lake, Taiwan
持續時間: 29 9月 20172 10月 2017

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