Authors
Alexandros Agapitos, Roisin Loughran, Miguel Nicolau, Simon Lucas, Michael O’Neill, Anthony Brabazon
Publication date
2019/2/21
Journal
IEEE Transactions on Evolutionary Computation
Volume
23
Issue
6
Pages
1029-1048
Publisher
IEEE
Description
Modern genetic programming (GP) operates within the statistical machine learning (SML) framework. In this framework, evolution needs to balance between approximation of an unknown target function on the training data and generalization, which is the ability to predict well on new data. This paper provides a survey and critical discussion of SML methods that enable GP to generalize.
Total citations
2020202120222023202487593
Scholar articles
A Agapitos, R Loughran, M Nicolau, S Lucas, M O'Neill… - IEEE Transactions on Evolutionary Computation, 2019