Design And Development Of GP-Based Data Mining Systems

Initially, function using genetic programming (GP) is investigated through symbolic regression for data mining applications. Various kinds of functions are investigated including function learning tasks as well as Boolean functions learning. The objective of the initial investigation is to review ho...

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Main Author: Lim, Amy Hui Lan
Format: Thesis
Published: 2003
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spelling my-mmu-ep.692009-12-04T11:30:16Z Design And Development Of GP-Based Data Mining Systems 2003 Lim, Amy Hui Lan LB2300 Higher Education Initially, function using genetic programming (GP) is investigated through symbolic regression for data mining applications. Various kinds of functions are investigated including function learning tasks as well as Boolean functions learning. The objective of the initial investigation is to review how GP is applied to function learning tasks. The drawbacks of this method are identified. Hybrid GP technique based on genetic algorithm-program (GA-P) for function learning tasks with variables and constants is investigated. This hybrid GP technique is further expanded to new hybrid GA SA-p. The new hybrid GA SA-P combining genetic algorithms (GA) and simulated annealing (SA) is proposed for function learning tasks with numeric constants. The convergence bahaviour will be compared with existing GP and genetic algorithm-program (GP-P). Application of Gp is extended to discover interesting rules among data sets. Given a set of data and appropriate parameter settings, GP is used to discover set of rules that describes the relationships that exist among the data. Finally, GP is investigated as decision tree classifier for classifying binary and multiclass classification problems. The simulation results will be compared with C4.5 decision tree algorithm. 2003 Thesis http://shdl.mmu.edu.my/69/ http://vlib.mmu.edu.my/diglib/login/dlusr/login.php masters Multimedia University Research Library
institution Multimedia University
collection MMU Institutional Repository
topic LB2300 Higher Education
spellingShingle LB2300 Higher Education
Lim, Amy Hui Lan
Design And Development Of GP-Based Data Mining Systems
description Initially, function using genetic programming (GP) is investigated through symbolic regression for data mining applications. Various kinds of functions are investigated including function learning tasks as well as Boolean functions learning. The objective of the initial investigation is to review how GP is applied to function learning tasks. The drawbacks of this method are identified. Hybrid GP technique based on genetic algorithm-program (GA-P) for function learning tasks with variables and constants is investigated. This hybrid GP technique is further expanded to new hybrid GA SA-p. The new hybrid GA SA-P combining genetic algorithms (GA) and simulated annealing (SA) is proposed for function learning tasks with numeric constants. The convergence bahaviour will be compared with existing GP and genetic algorithm-program (GP-P). Application of Gp is extended to discover interesting rules among data sets. Given a set of data and appropriate parameter settings, GP is used to discover set of rules that describes the relationships that exist among the data. Finally, GP is investigated as decision tree classifier for classifying binary and multiclass classification problems. The simulation results will be compared with C4.5 decision tree algorithm.
format Thesis
qualification_level Master's degree
author Lim, Amy Hui Lan
author_facet Lim, Amy Hui Lan
author_sort Lim, Amy Hui Lan
title Design And Development Of GP-Based Data Mining Systems
title_short Design And Development Of GP-Based Data Mining Systems
title_full Design And Development Of GP-Based Data Mining Systems
title_fullStr Design And Development Of GP-Based Data Mining Systems
title_full_unstemmed Design And Development Of GP-Based Data Mining Systems
title_sort design and development of gp-based data mining systems
granting_institution Multimedia University
granting_department Research Library
publishDate 2003
_version_ 1747829080982552576