Evolving Ensembles: What Can We Learn from Biological Mutualisms?
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- @InProceedings{lones2015evolving,
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author = "Michael A. Lones and Stuart E. Lacy and
Stephen L. Smith",
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title = "Evolving Ensembles: What Can We Learn from Biological
Mutualisms?",
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booktitle = "10th International Conference on Information
Processing in Cells and Tissues, IPCAT 2015",
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year = "2015",
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editor = "Michael Lones and Andy Tyrrell and Stephen Smith and
Gary Fogel",
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volume = "9303",
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series = "LNCS",
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pages = "52--60",
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address = "San Diego, CA, USA",
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month = sep # " 14-16",
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publisher = "Springer International Publishing",
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keywords = "genetic algorithms, genetic programming",
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isbn13 = "978-3-319-23108-2",
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DOI = "doi:10.1007/978-3-319-23108-2_5",
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abstract = "Ensembles are groups of classifiers which cooperate in
order to reach a decision. Conventionally, the members
of an ensemble are trained sequentially, and typically
independently, and are not brought together until the
final stages of ensemble generation. In this paper, we
discuss the potential benefits of training classifiers
together, so that they learn to interact at an early
stage of their development. As a potential mechanism
for achieving this, we consider the biological concept
of mutualism, whereby cooperation emerges over the
course of biological evolution. We also discuss
potential mechanisms for implementing this approach
within an evolutionary algorithm context.",
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notes = "Affiliated with School of Mathematical and Computer
Sciences, Heriot-Watt University",
- }
Genetic Programming entries for
Michael A Lones
Stuart E Lacy
Stephen L Smith
Citations