Evolving Algorithms for Over-Constrained and Satisfaction Problems
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @PhdThesis{Bain:thesis,
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author = "Stuart Iain Bain",
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title = "Evolving Algorithms for Over-Constrained and
Satisfaction Problems",
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school = "School of Information and Communication Technology,
Griffith University",
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year = "2006",
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address = "Brisbane, Queensland, Australia",
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month = nov,
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keywords = "genetic algorithms, genetic programming",
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URL = "http://stuart.freeshell.org/pubs/bain06evolving.pdf",
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broken_url = "https://experts.griffith.edu.au/publication/n0c3cebffccba31781b944d6c54e6049b",
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URL = "http://hdl.handle.net/10072/365848",
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DOI = "doi:10.25904/1912/1794",
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size = "131 pages",
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abstract = "The notion that a universally effective problem solver
may still exist, and is simply waiting to be found, is
slowly being abandoned in the light of a growing body
of work reporting on the narrow applicability of
individual heuristics. As the formalism of the
constraint satisfaction problem remains a popular
choice for the representation of problems to be solved
algorithmically, there exists an ongoing need for new
algorithms to efficiently handle the disparate range of
problems that have been posed in this representation.
Given the costs associated with manually applying human
algorithm development and problem solving expertise,
methods that can automatically adapt to the particular
features of a specific class of problem have begun to
attract more attention. Whilst a number of authors have
developed adaptive systems, the field, and particularly
with respect to their application to constraint
satisfaction problems, has seen only limited discussion
as to what features are desirable for an adaptive
constraint system. This may well have been a limiting
factor with previous implementations, which have
exhibited only subsets of the five features identified
in this work as important to the utility of an adaptive
constraint satisfaction system. Whether an adaptive
system exhibits these features depends on both the
chosen representation and the method of adaptation. In
this thesis, a three-part representation for constraint
algorithms is introduced, which defines an algorithm in
terms of contention, preference and selection
functions. An adaptive system based on genetic
programming is presented that adapts constraint
algorithms described using the mentioned three-part
representation. This is believed to be the first use of
standard genetic programming for learning constraint
algorithms. Finally, to further demonstrate the
efficacy of this adaptive system, its performance in
learning specialised algorithms for hard, real-world
problem instances is thoroughly evaluated. These
instances include random as well as structured
instances from known-hard benchmark distributions,
industrial problems (specifically, SAT-translated
planning and cryptographic problems) as well as
over-constrained problem instances. The outcome of this
evaluation is a set of new algorithms, valuable in
their own right, specifically tailored to these problem
classes. Partial results of this work have appeared in
the following publications: [1] Stuart Bain, John
Thornton, and Abdul Sattar (2004) Evolving algorithms
for constraint satisfaction. In Proc. of the 2004
Congress on Evolutionary Computation, pages 265-272.
[2] Stuart Bain, John Thornton, and Abdul Sattar (2004)
Methods of automatic algorithm generation. In Proc. of
the 9th Pacific Rim Conference on AI, pages 144-153.
[3] Stuart Bain, John Thornton, and Abdul Sattar.
(2005) A comparison of evolutionary methods for the
discovery of local search heuristics. In Australian
Conference on Artificial Intelligence: AI'05, pages
1068-1074. [4] Stuart Bain, John Thornton, and Abdul
Sattar (2005) Evolving variable-ordering heuristics for
constrained optimisation. In Principles and Practice of
Constraint Programming: CP'05, pages 732-736.",
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notes = "Supervisors: Abdul Sattar and John Thornton",
- }
Genetic Programming entries for
Stuart Bain
Citations