DocumentCode
412619
Title
Applying sample weighting methods to genetic parallel programming
Author
Cheang, Sin Man ; Lee, Kin Hong ; Leung, Kwong Sak
Author_Institution
Dept. of Comput., Hong Kong Inst. of Vocational Educ., China
Volume
2
fYear
2003
fDate
8-12 Dec. 2003
Firstpage
928
Abstract
We investigate the sample weighting effect on genetic parallel programming (GPP). GPP evolves parallel programs to solve the training samples in a training set. Usually, the samples are captured directly from a real-world system. The distribution of samples in a training set can be extremely biased. Standard GPP assigns equal weights to all samples. It slows down evolution because crowded regions of samples dominate the fitness evaluation causing premature convergence. We present 4 sample weighting (SW) methods, i.e. equal SW, class-equal SW, static SW (SSW) and dynamic SW (DSW). We evaluate the 4 methods on 7 training sets (3 Boolean functions and 4 UCI medical data classification databases). Experimental results show that DSW is superior in performance on all tested problems. In the 5-input symmetry Boolean function experiment, SSW and DSW boost the evolutionary performance by 465 and 745 times respectively. Due to the simplicity and effectiveness of SSW and DSW, they can also be applied to different population-based evolutionary algorithms.
Keywords
Boolean functions; genetic algorithms; learning (artificial intelligence); parallel programming; Boolean function; DSW; GPP; SSW; UCI medical data classification database; class-equal SW method; dynamic SW method; equal SW method; evolutionary algorithm; genetic parallel programming; real-world system; sample weighting method; static SW method; training sample; training set; Boolean functions; Clocks; Computer science; Computer science education; Concurrent computing; Educational programs; Evolutionary computation; Genetic programming; Parallel programming; Silicon compounds;
fLanguage
English
Publisher
ieee
Conference_Titel
Evolutionary Computation, 2003. CEC '03. The 2003 Congress on
Print_ISBN
0-7803-7804-0
Type
conf
DOI
10.1109/CEC.2003.1299766
Filename
1299766
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