A Preliminary Investigation of Overfitting in Evolutionary Driven Model Induction: Implications for Financial Modelling
Created by W.Langdon from
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- @InProceedings{tuite:evoapps11,
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author = "Cliodhna Tuite and Alexandros Agapitos and
Michael O'Neill and Anthony Brabazon",
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title = "A Preliminary Investigation of Overfitting in
Evolutionary Driven Model Induction: Implications for
Financial Modelling",
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booktitle = "Applications of Evolutionary Computing,
EvoApplications 2011: {EvoCOMNET}, {EvoFIN}, {EvoHOT},
{EvoMUSART}, {EvoSTIM}, {EvoTRANSLOG}",
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year = "2011",
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month = "27-29 " # apr,
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editor = "Cecilia {Di Chio} and Anthony Brabazon and
Gianni {Di Caro} and Rolf Drechsler and Marc Ebner and
Muddassar Farooq and Joern Grahl and Gary Greenfield and
Christian Prins and Juan Romero and
Giovanni Squillero and Ernesto Tarantino and Andrea G. B. Tettamanzi and
Neil Urquhart and A. Sima Uyar",
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series = "LNCS",
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volume = "6625",
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publisher = "Springer Verlag",
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address = "Turin, Italy",
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publisher_address = "Berlin",
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pages = "120--130",
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organisation = "EvoStar",
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keywords = "genetic algorithms, genetic programming, grammatical
evolution",
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isbn13 = "978-3-642-20519-4",
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DOI = "doi:10.1007/978-3-642-20520-0_13",
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size = "11 pages",
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abstract = "This paper investigates the effects of early stopping
as a method to counteract overfitting in evolutionary
data modelling using Genetic Programming. Early
stopping has been proposed as a method to avoid model
over training, which has been shown to lead to a
significant degradation of out-of-sample performance.
If we assume some sort of performance metric
maximisation, the most widely used early training
stopping criterion is the moment within the learning
process that an unbiased estimate of the performance of
the model begins to decrease after a strictly monotonic
increase through the earlier learning iterations. We
are conducting an initial investigation on the effects
of early stopping in the performance of Genetic
Programming in symbolic regression and financial
modelling. Empirical results suggest that early
stopping using the above criterion increases the
extrapolation abilities of symbolic regression models,
but is by no means the optimal training-stopping
criterion in the case of a real-world financial
dataset.",
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notes = "Part of \cite{DiChio:2011:evo_b} EvoApplications2011
held inconjunction with EuroGP'2011, EvoCOP2011 and
EvoBIO2011",
- }
Genetic Programming entries for
Cliodhna Tuite
Alexandros Agapitos
Michael O'Neill
Anthony Brabazon
Citations