Evolving fuzzy rules to model gene expression
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- @Article{Linden:2007:biosystems,
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author = "Ricardo Linden and Amit Bhaya",
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title = "Evolving fuzzy rules to model gene expression",
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journal = "Biosystems",
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year = "2007",
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volume = "88",
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number = "1-2",
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pages = "76--91",
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month = mar,
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keywords = "genetic algorithms, genetic programming, Fuzzy logic,
Microarrays, Reverse engineering, Gene regulatory
network",
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DOI = "doi:10.1016/j.biosystems.2006.04.006",
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abstract = "This paper develops an algorithm that extracts
explanatory rules from microarray data, which we treat
as time series, using genetic programming (GP) and
fuzzy logic. Reverse polish notation is used (RPN) to
describe the rules and to facilitate the GP approach.
The algorithm also allows for the insertion of prior
knowledge, making it possible to find sets of rules
that include the relationships between genes already
known. The algorithm proposed is applied to problems
arising in the construction of gene regulatory
networks, using two different sets of real data from
biological experiments on the Arabidopsis thaliana cold
response and the rat central nervous system,
respectively. The results show that the proposed
technique can fit data to a pre-defined precision even
in situations where the data set has thousands of
features but only a limited number of points in time
are available, a situation in which traditional
statistical alternatives encounter difficulties, due to
the scarcity of time points.",
- }
Genetic Programming entries for
Ricardo Linden
Amit Bhaya
Citations