Faster Convergence with Lexicase Selection in Tree-based Automated Machine Learning
Matsumoto, Nicholas, Saini, Anil Kumar, Ribeiro, Pedro, Choi, Hyunjun, Orlenko, Alena, Lyytikäinen, Leo-Pekka, Laurikka, Jari O, Lehtimäki, Terho, Batista, Sandra, Moore, Jason H.
–arXiv.org Artificial Intelligence
In many evolutionary computation systems, parent selection methods can affect, among other things, convergence to a solution. In this paper, we present a study comparing the role of two commonly used parent selection methods in evolving machine learning pipelines in an automated machine learning system called Tree-based Pipeline Optimization Tool (TPOT). Specifically, we demonstrate, using experiments on multiple datasets, that lexicase selection leads to significantly faster convergence as compared to NSGA-II in TPOT. We also compare the exploration of parts of the search space by these selection methods using a trie data structure that contains information about the pipelines explored in a particular run.
arXiv.org Artificial Intelligence
Feb-1-2023
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