Similarity reasoning-driven evolutionary fuzzy system for monotonic-preserving models

Fuzzy Inference System (FIS) is a popular computing paradigm which has been identified as a solution for various application domains, e.g. control, assessment, decision making, and approximation. However, it suffers from two major shortcomings, i.e., the "curse of dimensionality" and the &...

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Main Author: Jee, Tze Ling
Format: Thesis
Language:English
Published: Universiti Malaysia Sarawak, (UNIMAS) 2013
Subjects:
Online Access:http://ir.unimas.my/id/eprint/13966/
http://ir.unimas.my/id/eprint/13966/2/Jee.pdf
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author Jee, Tze Ling
author_facet Jee, Tze Ling
author_sort Jee, Tze Ling
building UNIMAS Institutional Repository
collection Online Access
description Fuzzy Inference System (FIS) is a popular computing paradigm which has been identified as a solution for various application domains, e.g. control, assessment, decision making, and approximation. However, it suffers from two major shortcomings, i.e., the "curse of dimensionality" and the "tomato classification" problem. The former suggests that the number of fuzzy rules increases in an exponential manner while the number of input increases. The later is an important fuzzy reasoning problem while a fuzzy rule base is incomplete. The focus of this thesis is on fuzzy rule base reduction techniques, fuzzy rule selection techniques, Approximate Analogical Reasoning Schema (AARS), evolutionary computation techniques and monotonicity property of an FIS, in order to overcome these two shortcomings. The main contribution of this thesis is to formulate the fuzzy rule selection problems to facilitate the AARS and FIS modeling as an optimization problem. An optimization tool, i.e., genetic algorithm (GA), is further implemented. The applicability of the proposed framework is demonstrated and evaluated wi,th two real problems, i.e., education assessment problem and failure analysis problem. The empirical results show the effectiveness of the proposed framework in selecting fuzzy rules and reconstruct a complete rule base with the selected fuzzy rules. However, it is observed that the results obtained do not always fulfill the monotonicity property. Hence, the proposed framework is further extended, and a set of mathematical conditions are adopt~d as governing equation. Again, the applicability of the extended framework is demonstrated and evaluated with an education assessment problem and a failure analysis problem.
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spelling unimas-139662025-06-16T06:47:04Z http://ir.unimas.my/id/eprint/13966/ Similarity reasoning-driven evolutionary fuzzy system for monotonic-preserving models Jee, Tze Ling T Technology (General) Fuzzy Inference System (FIS) is a popular computing paradigm which has been identified as a solution for various application domains, e.g. control, assessment, decision making, and approximation. However, it suffers from two major shortcomings, i.e., the "curse of dimensionality" and the "tomato classification" problem. The former suggests that the number of fuzzy rules increases in an exponential manner while the number of input increases. The later is an important fuzzy reasoning problem while a fuzzy rule base is incomplete. The focus of this thesis is on fuzzy rule base reduction techniques, fuzzy rule selection techniques, Approximate Analogical Reasoning Schema (AARS), evolutionary computation techniques and monotonicity property of an FIS, in order to overcome these two shortcomings. The main contribution of this thesis is to formulate the fuzzy rule selection problems to facilitate the AARS and FIS modeling as an optimization problem. An optimization tool, i.e., genetic algorithm (GA), is further implemented. The applicability of the proposed framework is demonstrated and evaluated wi,th two real problems, i.e., education assessment problem and failure analysis problem. The empirical results show the effectiveness of the proposed framework in selecting fuzzy rules and reconstruct a complete rule base with the selected fuzzy rules. However, it is observed that the results obtained do not always fulfill the monotonicity property. Hence, the proposed framework is further extended, and a set of mathematical conditions are adopt~d as governing equation. Again, the applicability of the extended framework is demonstrated and evaluated with an education assessment problem and a failure analysis problem. Universiti Malaysia Sarawak, (UNIMAS) 2013 Thesis NonPeerReviewed text en http://ir.unimas.my/id/eprint/13966/2/Jee.pdf Jee, Tze Ling (2013) Similarity reasoning-driven evolutionary fuzzy system for monotonic-preserving models. Masters thesis, Universiti Malaysia Sarawak, (UNIMAS).
spellingShingle T Technology (General)
Jee, Tze Ling
Similarity reasoning-driven evolutionary fuzzy system for monotonic-preserving models
title Similarity reasoning-driven evolutionary fuzzy system for monotonic-preserving models
title_full Similarity reasoning-driven evolutionary fuzzy system for monotonic-preserving models
title_fullStr Similarity reasoning-driven evolutionary fuzzy system for monotonic-preserving models
title_full_unstemmed Similarity reasoning-driven evolutionary fuzzy system for monotonic-preserving models
title_short Similarity reasoning-driven evolutionary fuzzy system for monotonic-preserving models
title_sort similarity reasoning-driven evolutionary fuzzy system for monotonic-preserving models
topic T Technology (General)
url http://ir.unimas.my/id/eprint/13966/
http://ir.unimas.my/id/eprint/13966/2/Jee.pdf