Title of article
Supervised Pseudo Self-Evolving Cerebellar algorithm for generating fuzzy membership functions
Author/Authors
Ang، نويسنده , , K.K. and Quek، نويسنده , , C.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2012
Pages
9
From page
2279
To page
2287
Abstract
The proper generation of fuzzy membership function is of fundamental importance in fuzzy applications. The effectiveness of the membership functions in pattern classifications can be objectively measured in terms of interpretability and classification accuracy in the conformity of the decision boundaries to the inherent probabilistic decision boundaries of the training data. This paper presents the Supervised Pseudo Self-Evolving Cerebellar (SPSEC) algorithm that is bio-inspired from the two-stage development process of the human nervous system whereby the basic architecture are first laid out without any activity-dependent processes and then refined in activity-dependent ways. SPSEC first constructs a cerebellar-like structure in which neurons with high trophic factors evolves to form membership functions that relate intimately to the probability distributions of the data and concomitantly reconcile with defined semantic properties of linguistic variables. The experimental result of using SPSEC to generate fuzzy membership functions is reported and compared with a selection of algorithms using a publicly available UCI Sonar dataset to illustrate its effectiveness.
Keywords
Linguistic modeling , Classification , Interpretability , fuzzy membership function
Journal title
Expert Systems with Applications
Serial Year
2012
Journal title
Expert Systems with Applications
Record number
2351125
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