Integration of Code-Fragment based Learning Classifier Systems for Multiple Domain Perception and Learning
Created by W.Langdon from
gp-bibliography.bib Revision:1.8098
- @InProceedings{Liu:2016:CEC,
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author = "Yi Liu2 and Muhammad Iqbal and Isidro Alvarez and
Will N. Browne",
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title = "Integration of Code-Fragment based Learning Classifier
Systems for Multiple Domain Perception and Learning",
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booktitle = "Proceedings of 2016 IEEE Congress on Evolutionary
Computation (CEC 2016)",
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year = "2016",
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editor = "Yew-Soon Ong",
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pages = "2177--2184",
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address = "Vancouver",
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month = "24-29 " # jul,
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publisher = "IEEE Press",
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keywords = "genetic algorithms, genetic programming",
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isbn13 = "978-1-5090-0623-6",
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DOI = "doi:10.1109/CEC.2016.7744057",
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abstract = "It has been shown that identifying building blocks of
knowledge and then reusing them to solve complex
problems is a practical and useful endeavour. Previous
work made it possible to solve various, until then,
intractable tasks. However, the individual algorithms
targeted one specific problem type, e.g. scalable
problems or domains with repeating patterns. The
question that arises is: Can the disparate techniques
be combined into a single approach to solve more
complex problems that span several domains or that may
be unknown to the agent? The first stage in developing
such a system is to be able to recognise domains from
unidentified input stimuli and identify the approaches
best suited to them. The novel work here aims to
realise this primary stage by combining several
code-fragment (CF) based XCS systems. The stimulus and
its guiding effect, will be instrumental in helping the
agent decide which of its stored systems is the most
capable of solving the problem, or if there is a
conflict between possible solutions. Importantly, the
agent will be capable of determining if the current
problem is entirely new, in which case it spawns a
training agent to produce a tractable solution to store
and reuse. The proposed technique relies on the proven
benefits in scalability of CF based systems and
furthers the body of knowledge by tackling unknown
problems (to the agent). The main contribution of this
research is that a system of proven CF techniques is
used for the first time. We show that by using the new
CF system, it is possible to identify an unknown
problem and to arrive at a viable solution.",
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notes = "WCCI2016",
- }
Genetic Programming entries for
Yi Liu2
Muhammad Iqbal
Isidro Alvarez
Will N Browne
Citations