Advances in data-driven analyses and modelling using EPR-MOGA
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Giustolisi:2009:JH,
-
author = "O. Giustolisi and D. A. Savic",
-
title = "Advances in data-driven analyses and modelling using
{EPR-MOGA}",
-
journal = "Journal of Hydroinformatics",
-
year = "2009",
-
volume = "11",
-
number = "3",
-
pages = "225--236",
-
month = jul,
-
keywords = "genetic algorithms, genetic programming, data-driven
modelling, evolutionary computing, groundwater
resources, multiobjective optimization, symbolic
regression, Brindisi, multi objective, ANN",
-
ISSN = "1464-7141",
-
URL = "http://www.iwaponline.com/jh/011/0225/0110225.pdf",
-
DOI = "doi:10.2166/hydro.2009.017",
-
size = "12 pages",
-
abstract = "Evolutionary Polynomial Regression (EPR) is a recently
developed hybrid regression method that combines the
best features of conventional numerical regression
techniques with the genetic programming/symbolic
regression technique. The original version of EPR works
with formulae based on true or pseudo-polynomial
expressions using a single-objective genetic algorithm.
Therefore, to obtain a set of formulae with a variable
number of pseudo-polynomial coefficients, the
sequential search is performed in the formulae space.
This article presents an improved EPR strategy that
uses a multi-objective genetic algorithm instead. We
demonstrate that multi-objective approach is a more
feasible instrument for data analysis and model
selection. Moreover, we show that EPR can also allow
for simple uncertainty analysis (since it returns
polynomial structures that are linear with respect to
the estimated coefficients). The methodology is tested
and the results are reported in a case study relating
groundwater level predictions to total monthly
rainfall.",
-
notes = "Department of Civil and
EnvironmentalEngineering,Technical University of Bari,
Italy",
- }
Genetic Programming entries for
Orazio Giustolisi
Dragan Savic
Citations