Prediction of expected performance for a genetic programming classifier
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Martinez:2016:GPEM,
-
author = "Yuliana Martinez and Leonardo Trujillo and
Pierrick Legrand and Edgar Galvan-Lopez",
-
title = "Prediction of expected performance for a genetic
programming classifier",
-
journal = "Genetic Programming and Evolvable Machines",
-
year = "2016",
-
volume = "17",
-
number = "4",
-
pages = "409--449",
-
month = dec,
-
keywords = "genetic algorithms, genetic programming, Problem
difficulty, Supervised learning",
-
ISSN = "1389-2576",
-
URL = "https://mural.maynoothuniversity.ie/12329/1/Galvan_Prediction_2016.pdf",
-
URL = "https://rdcu.be/d0k9b",
-
DOI = "doi:10.1007/s10710-016-9265-9",
-
size = "41 pages",
-
abstract = "The estimation of problem difficulty is an open issue
in genetic programming (GP). The goal of this work is
to generate models that predict the expected
performance of a GP-based classifier when it is applied
to an unseen task. Classification problems are
described using domain-specific features, some of which
are proposed in this work, and these features are given
as input to the predictive models. These models are
referred to as predictors of expected performance. We
extend this approach by using an ensemble of
specialized predictors (SPEP), dividing classification
problems into groups and choosing the corresponding
SPEP. The proposed predictors are trained using 2D
synthetic classification problems with balanced
datasets. The models are then used to predict the
performance of the GP classifier on unseen real-world
datasets that are multidimensional and imbalanced. This
work is the first to provide a performance prediction
of a GP system on test data, while previous works
focused on predicting training performance. Accurate
predictive models are generated by posing a symbolic
regression task and solving it with GP. These results
are achieved by using highly descriptive features and
including a dimensionality reduction stage that
simplifies the learning and testing process. The
proposed approach could be extended to other
classification algorithms and used as the basis of an
expert system for algorithm selection.",
- }
Genetic Programming entries for
Yuliana Martinez
Leonardo Trujillo
Pierrick Legrand
Edgar Galvan Lopez
Citations