Genetic Programming with Noise Sensitivity for Imputation Predictor Selection in Symbolic Regression with Incomplete Data
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InProceedings{Al-Helali:2020:CEC,
-
author = "Baligh Al-Helali and Qi Chen and Bing Xue and
Mengjie Zhang",
-
title = "Genetic Programming with Noise Sensitivity for
Imputation Predictor Selection in Symbolic Regression
with Incomplete Data",
-
booktitle = "2020 IEEE Congress on Evolutionary Computation, CEC
2020",
-
year = "2020",
-
editor = "Yaochu Jin",
-
pages = "paper id24344",
-
address = "internet",
-
month = "19-24 " # jul,
-
organization = "IEEE Computational Intelligence Society",
-
publisher = "IEEE Press",
-
keywords = "genetic algorithms, genetic programming",
-
isbn13 = "978-1-7281-6929-3",
-
DOI = "doi:10.1109/CEC48606.2020.9185526",
-
abstract = "This paper presents a feature selection method that
incorporates a sensitivity-based single feature
importance measure in a context-based feature selection
approach. The single-wise importance is based on the
sensitivity of the learning performance with respect to
adding noise to the predictive features. Genetic
programming is used as a context-based selection
mechanism, where the selection of features is
determined by the change in the performance of the
evolved genetic programming models when the feature is
injected with noise. Imputation is a key strategy to
mitigate the data incompleteness problem. However, it
has been rarely investigated for symbolic regression on
incomplete data. In this work, an attempt to contribute
to filling this gap is presented. The proposed method
is applied to selecting imputation predictors
(features/variables) in symbolic regression with
missing values. The evaluation is performed on
real-world data sets considering three performance
measures: imputation accuracy, symbolic regression
performance, and features' reduction ability. Compared
with the benchmark methods, the experimental evaluation
shows that the proposed method can achieve an enhanced
imputation, improve the symbolic regression
performance, and use smaller sets of selected
predictors.",
-
notes = "https://wcci2020.org/
Victoria University of Wellington, New Zealand.
Also known as \cite{9185526}",
- }
Genetic Programming entries for
Baligh Al-Helali
Qi Chen
Bing Xue
Mengjie Zhang
Citations