Reducing Failures in Investment Recommendations using Genetic Programming
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InProceedings{JinLi:2000:CEF,
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author = "Jin Li and Edward P. K. Tsang",
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title = "Reducing Failures in Investment Recommendations using
Genetic Programming",
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booktitle = "Computing in Economics and Finance",
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year = "2000",
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address = "Universitat Pompeu Fabra, Barcelona, Spain",
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month = "6-8 " # jul,
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keywords = "genetic algorithms, genetic programming",
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URL = "http://www.cs.bham.ac.uk/~jxl/cercialink/web/publication/ReducingFailures.pdf",
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URL = "http://cswww.essex.ac.uk/CSP/finance/papers/LiTsa-LowRF-Cef2000.ps",
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URL = "http://ideas.repec.org/p/sce/scecf0/332.html",
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abstract = "FGP (Financial Genetic Programming) is a genetic
programming based system that specialises in financial
forecasting. In the past, we have reported that FGP-1
(the first version of FGP) is capable of producing
accurate predictions in a variety of data sets. It can
accurately predict whether a required rate of return
can be achieved within a user-specified period. This
paper reports further development of FGP, which is
motivated by realistic needs as described below: a
recommendation {"}not to invest{"} is often less
interesting than a recommendation {"}to invest{"}. The
former leads to no action. If it is wrong, the user
loses an investment opportunity, which may not be
serious if other investment opportunities are
available. On the other hand, a recommendation to
invest leads to commitment of funds. If it is wrong,
the user fails to achieve the target rate of return.
Our objective is to reduce the rate of failure when FGP
recommends to invest. In this paper, we present a
method of tuning the rate of failure by FGP to reflect
the user's preference. This is achieved by introducing
a novel constraint-directed fitness function to FGP.
The new system, FGP-2, was extensively tested on
historical Dow Jones Industrial Average (DJIA) Index.
Trained with data from a seven-and-a-half-years period,
decision trees generated by FGP-2 were tested on data
from a three-and-a-half-years out-of-sample period.
Results confirmed that one can tune the rate of failure
by adjusting a constraint parameter in FGP-2. Lower
failure rate can be achieved at the cost of missing
opportunities, but without affecting the overall
accuracy of the system. The decision trees generated
were further analysed over three sub-periods with down
trend, side-way trend and up trend, respectively.
Consistent results were achieved. This shows the
robustness of FGP-2. We believe there is scope to
generalise the constrained fitness function method to
other applications.",
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notes = "http://enginy.upf.es/SCE/index2.html",
- }
Genetic Programming entries for
Jin Li
Edward P K Tsang
Citations