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    Please use this identifier to cite or link to this item: http://asiair.asia.edu.tw/ir/handle/310904400/8880


    Title: Improve neuro-fuzzy learning by attribute reduction
    Authors: Chang, Fengming M.;Chan, Chien-Chung
    Contributors: Department of Information Science and Applications
    Keywords: Adaptive systems;Artificial intelligence;Computer networks;Education;Fuzzy inference;Fuzzy logic;Fuzzy neural networks;Fuzzy sets;Fuzzy systems;Neural networks;Set theory;Statistics;Annual meetings;Neuro-fuzzy learning;Rough sets
    Date: 2008
    Issue Date: 2010-04-08 12:36:06 (UTC+0)
    Publisher: Asia University
    Abstract: Neuro-fuzzy learning is a combination of neural networks and fuzzy systems to learn fuzzy rules from examples. One of the popular tools for neuro-fuzzy learning is the Adaptive Network based Fuzzy Inference Systems (ANFIS) introduced by Jang. It is observed from our past experiments that data sets with more than six attributes (features) may present a challenge to ANFIS learning. Rough set theory introduced by Pawlak has been shown as an effective tool for data reduction. This paper studied how ANFIS learning may benefit from using rough set tools for data reduction. Empirical results show that ANFIS learning from reduced data sets usually has better prediction accuracies and faster learning time.
    Relation: Annual Conference of the North American Fuzzy Information Processing Society - NAFIPS :4531208
    Appears in Collections:[行動商務與多媒體應用學系] 會議論文

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