An Efficient Federated Genetic Programming Framework for Symbolic Regression
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Dong:TETCI,
-
author = "Junlan Dong and Jinghui Zhong and Wei-Neng Chen and
Jun Zhang",
-
journal = "IEEE Transactions on Emerging Topics in Computational
Intelligence",
-
title = "An Efficient Federated Genetic Programming Framework
for Symbolic Regression",
-
year = "2023",
-
volume = "7",
-
number = "3",
-
pages = "858--871",
-
month = jun,
-
keywords = "genetic algorithms, genetic programming, gene
expression programming",
-
ISSN = "2471-285X",
-
DOI = "doi:10.1109/TETCI.2022.3201299",
-
abstract = "Symbolic regression is an important method of
data-driven modeling, which can provide explicit
mathematical expressions for data analysis. However,
the existing genetic programming algorithms for
symbolic regression require centralized storage of all
data, which is unrealistic in many practical
applications that involve data privacy. If the data
comes from different sources, such as hospitals and
banks, it is prone to privacy breaches and security
issues. To this end, we propose an efficient federated
genetic programming framework that can train a global
model without integrated data. Each client can process
decentralized data locally in parallel, without sending
the original data to the server. This method not only
protects the privacy of the data but also reduces the
time required for data collection. Moreover, a mean
shift aggregation mechanism is developed for
aggregating local fitness. Considering the samples
relative importance, the mechanism improves the
imbalance of symbolic regression data on real-life by
incorporating weights into fitness function.
Furthermore, based on this framework and self-learning
gene expression programming (SL-GEP), a federated
self-learning gene expression programming algorithm is
developed. The experimental results show that, compared
with standard SL-GEP which is a training model based on
decentralized data only, our proposed federated genetic
programming method is effective to protect data privacy
and can have consistently better generalization
performance.",
-
notes = "Also known as \cite{9881543}
School of Computer Science and Engineering, South China
University of Technology, Guangzhou 510006, China",
- }
Genetic Programming entries for
Junlan Dong
Jinghui Zhong
Wei-Neng Chen
Jun Zhang
Citations