Reducing overfitting in manufacturing process modeling using a backward elimination based genetic programming
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- @Article{Chan20111648,
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author = "K. Y. Chan and C. K. Kwong and T. S. Dillon and
Y. C. Tsim",
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title = "Reducing overfitting in manufacturing process modeling
using a backward elimination based genetic
programming",
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journal = "Applied Soft Computing",
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volume = "11",
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number = "2",
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pages = "1648--1656",
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year = "2011",
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note = "The Impact of Soft Computing for the Progress of
Artificial Intelligence",
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ISSN = "1568-4946",
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DOI = "doi:10.1016/j.asoc.2010.04.022",
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URL = "http://www.sciencedirect.com/science/article/B6W86-501FPF7-6/2/4bf5179fccc0bf3772b121aef439e062",
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keywords = "genetic algorithms, genetic programming, Process
modelling, Polynomial modelling, Overfitting",
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abstract = "Genetic programming (GP) has demonstrated as an
effective approach in polynomial modelling of
manufacturing processes. However, polynomial models
with redundant terms generated by GP may depict over
fitting, while the developed models have good accuracy
on trained data sets but relatively poor accuracy on
testing data sets. In the literature, approaches of
avoiding overfitting in GP are handled by limiting the
number of terms in polynomial models. However, those
approaches cannot guarantee terms in polynomial models
produced by GP are statistically significant to
manufacturing processes. In this paper, a statistical
method, backward elimination (BE), is proposed to
incorporate with GP, in order to eliminate
insignificant terms in polynomial models. The
performance of the proposed GP has been evaluated by
modeling three real-world manufacturing processes,
epoxy dispenser for electronic packaging, solder paste
dispenser for electronic manufacturing, and punch press
system for leadframe downset in IC packaging. Empirical
results show that insignificant terms in the polynomial
models can be eliminated by the proposed GP and also
the polynomial models generated by the proposed GP can
achieve results with better predictions than the other
commonly used existent methods, which are commonly used
in GP for avoiding overfitting in polynomial
modeling.",
- }
Genetic Programming entries for
Kit Yan Chan
Che Kit Kwong
Tharam S Dillon
Y C Tsim
Citations