Problem Driven Machine Learning by Co-evolving Genetic Programming Trees and Rules in a Learning Classifier System
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InProceedings{Urbanowicz:2017:GPTP,
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author = "Ryan J. Urbanowicz and Ben Yang and Jason H. Moore",
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title = "Problem Driven Machine Learning by Co-evolving Genetic
Programming Trees and Rules in a Learning Classifier
System",
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booktitle = "Genetic Programming Theory and Practice XV",
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editor = "Wolfgang Banzhaf and Randal S. Olson and
William Tozier and Rick Riolo",
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year = "2017",
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series = "Genetic and Evolutionary Computation",
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pages = "55--71",
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address = "University of Michigan in Ann Arbor, USA",
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month = may # " 18--20",
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organisation = "the Center for the Study of Complex Systems",
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publisher = "Springer",
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keywords = "genetic algorithms, genetic programming",
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isbn13 = "978-3-319-90511-2",
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URL = "https://link.springer.com/chapter/10.1007/978-3-319-90512-9_4",
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DOI = "doi:10.1007/978-3-319-90512-9_4",
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abstract = "A persistent challenge in data mining involves
matching an applicable as well as effective machine
learner to a target problem. One approach to facilitate
this process is to develop algorithms that avoid
modelling assumptions and seek to adapt to the problem
at hand. Learning classifier systems (LCSs) have proven
themselves to be a flexible, interpretable, and
powerful approach to classification problems. They are
particularly advantageous with respect to multivariate,
complex, or heterogeneous patterns of association.
While LCSs have been successfully adapted to handle
continuous-valued endpoint (i.e. regression) problems,
there are still some key performance deficits with
respect to model prediction accuracy and simplicity
when compared to other machine learners. In the present
study we propose a strategy towards improving LCS
performance on supervised learning continuous-valued
endpoint problems. Specifically, we hypothesize that if
an LCS population includes and co-evolves two disparate
representations (i.e. LCS rules, and genetic
programming trees) than the system can adapt the
appropriate representation to best capture meaningful
patterns of association, regardless of the complexity
of that association, or the nature of the endpoint
(i.e. discrete vs. continuous). To successfully
integrate these modelling representations, we rely on
multi-objective fitness (i.e. accuracy, and instance
coverage) and an information exchange mechanism between
the two representation species. This paper lays out the
reasoning for this approach, introduces the proposed
methodology, and presents basic preliminary results
supporting the potential of this approach as an area
for further evaluation and development.",
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notes = "GPTP 2017, Part of \cite{Banzhaf:2017:GPTP} published
after the workshop in 2018",
- }
Genetic Programming entries for
Ryan J Urbanowicz
Benjamin Yang
Jason H Moore
Citations