Computational learning techniques for intraday FX trading using popular technical indicators
Created by W.Langdon from
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- @Article{Dempster:2001:trading,
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author = "M. A. H. Dempster and Tom W. Payne and
Yazann Romahi and G. W. P. Thompson",
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title = "Computational learning techniques for intraday {FX}
trading using popular technical indicators",
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journal = "IEEE Transactions on Neural Networks",
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year = "2001",
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volume = "12",
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number = "4",
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pages = "744--754",
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month = jul,
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keywords = "genetic algorithms, genetic programming, Markov
processes, foreign exchange trading, learning
(artificial intelligence), Markov decision,
computational learning, foreign exchange trading,
heuristic, reinforcement learning, technical trading,
transaction costs",
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ISSN = "1045-9227",
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URL = "http://mahd-pc.jbs.cam.ac.uk/archive/PAPERS/2000/ieeetrading.pdf",
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DOI = "doi:10.1109/72.935088",
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abstract = "We consider strategies which use a collection of
popular technical indicators as input and seek a
profitable trading rule defined in terms of them. We
consider two popular computational learning approaches,
reinforcement learning and genetic programming, and
compare them to a pair of simpler methods: the exact
solution of an appropriate Markov decision problem, and
a simple heuristic. We find that although all methods
are able to generate significant in-sample and
out-of-sample profits when transaction costs are zero,
the genetic algorithm approach is superior for non-zero
transaction costs, although none of the methods produce
significant profits at realistic transaction costs. We
also find that there is a substantial danger of
overfitting if in-sample learning is not constrained",
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notes = "CODEN: ITNNEP. INSPEC Accession Number:6997298
Location: technical report WP30/2000
",
- }
Genetic Programming entries for
Michael Dempster
Tom W Payne
Yazann Romahi
Giles W P Thompson
Citations