Cautionary note on the use of genetic programming in statistical downscaling
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{vu37709,
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author = "Sachindra Dhanapala Arachchige and Khandakar Ahmed and
S Shahid and B. J. C Perera",
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title = "Cautionary note on the use of genetic programming in
statistical downscaling",
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journal = "International Journal of Climatology",
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year = "2018",
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volume = "38",
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number = "8",
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pages = "3449--3465",
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month = jun,
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note = "SHORT COMMUNICATION",
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keywords = "genetic algorithms, genetic programming, GP algorithm,
Victoria, Pakistan, downscaling models, climate,
predictor--predictand relationships, atmospheric
domain",
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publisher = "Royal Meteorological Society",
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ISSN = "1097-0088",
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URL = "https://vuir.vu.edu.au/37709/",
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DOI = "doi:10.1002/joc.5508",
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abstract = "The selection of inputs (predictors) to downscaling
models is an important task in any statistical
downscaling exercise. The selection of an appropriate
set of predictors to a downscaling model enhances its
generalization skills as such set of predictors can
reliably explain the catchment-scale hydroclimatic
variable (predictand). Among the predictor selection
procedures seen in the literature, the use of genetic
programming (GP) can be regarded as a unique approach
as it not only selects a set of predictors influential
on the predictand but also simultaneously determines a
linear or nonlinear regression relationship between the
predictors and the predictand. In this short
communication, the details of an investigation on the
assessment of effectiveness of GP in identifying a
unique optimum set of predictors influential on the
predictand and its ability to generate a unique optimum
predictor-predictand relationship are presented. In
this investigation, downscaling models were evolved for
relatively wet and dry precipitation stations
pertaining to two study areas using two different sets
of reanalysis data for each calendar month maintaining
the same GP attributes. It was found that irrespective
of the climate regime (i.e., wet and dry) and
reanalysis data set used, the probability of
identification of a unique optimum set of predictors
influential on precipitation by GP is quite low.
Therefore, it can be argued that the use of GP for the
selection of a unique optimum set of predictors
influential on a predictand is not effective. However,
when run repetitively, GP algorithm selected certain
predictors more frequently than others. Also, when run
repetitively, the structure of the predictor-predictand
relationships evolved by GP varied from one run to
another, indicating that the physical interpretation of
the predictor-predictand relationships evolved by GP in
a downscaling exercise can be unreliable.",
- }
Genetic Programming entries for
Sachindra Dhanapala Arachchige
Khandakar Ahmed
Shamsuddin Shahid
Chris Perera
Citations