Using Fuzzy C-means to Discover Concept-drift Patterns for Membership Functions

‎People often change their minds at different times and at different places‎. ‎It is important and valuable to indicate concept-drift patterns in unexpected ways for shopping behaviours for commercial applications‎. ‎Research about concept drift has been growing in recent years‎. ‎Many algorithms de...

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Bibliographic Details
Main Authors: Tzung-Pei Hong, Chun-Hao Chen, Yan-Kang Li, Min-Thai Wu
Format: Article
Language:English
Published: Islamic Azad University, Bandar Abbas Branch 2022-11-01
Series:Transactions on Fuzzy Sets and Systems
Subjects:
Online Access:https://tfss.journals.iau.ir/article_691317_3a9ddfad42914073275ec02bdcd98ad9.pdf
Description
Summary:‎People often change their minds at different times and at different places‎. ‎It is important and valuable to indicate concept-drift patterns in unexpected ways for shopping behaviours for commercial applications‎. ‎Research about concept drift has been growing in recent years‎. ‎Many algorithms dealt with concept-drift information and detected new market trends‎. ‎This paper proposes an approach based on fuzzy c-means (FCM) to mine the concept drift of fuzzy membership functions‎. ‎The proposed algorithm is subdivided into two stages‎. ‎In the first stage‎, ‎individual fuzzy membership functions are generated from different training databases by the proposed FCM-based approach‎. ‎Then‎, ‎the proposed algorithm will mine the concept-drift patterns from the sets of fuzzy membership functions in the second stage‎. ‎Experiments on simulated datasets were also conducted to show the effectiveness of the approach‎.
ISSN:2821-0131