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Main Authors: Co-Reyes, John D., Miao, Yingjie, Tucker, George, Faust, Aleksandra, Real, Esteban
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2402.05821
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author Co-Reyes, John D.
Miao, Yingjie
Tucker, George
Faust, Aleksandra
Real, Esteban
author_facet Co-Reyes, John D.
Miao, Yingjie
Tucker, George
Faust, Aleksandra
Real, Esteban
contents How to automatically design better machine learning programs is an open problem within AutoML. While evolution has been a popular tool to search for better ML programs, using learning itself to guide the search has been less successful and less understood on harder problems but has the promise to dramatically increase the speed and final performance of the optimization process. We propose guiding evolution with a binary discriminator, trained online to distinguish which program is better given a pair of programs. The discriminator selects better programs without having to perform a costly evaluation and thus speed up the convergence of evolution. Our method can encode a wide variety of ML components including symbolic optimizers, neural architectures, RL loss functions, and symbolic regression equations with the same directed acyclic graph representation. By combining this representation with modern GNNs and an adaptive mutation strategy, we demonstrate our method can speed up evolution across a set of diverse problems including a 3.7x speedup on the symbolic search for ML optimizers and a 4x speedup for RL loss functions.
format Preprint
id arxiv_https___arxiv_org_abs_2402_05821
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Guided Evolution with Binary Discriminators for ML Program Search
Co-Reyes, John D.
Miao, Yingjie
Tucker, George
Faust, Aleksandra
Real, Esteban
Machine Learning
Neural and Evolutionary Computing
How to automatically design better machine learning programs is an open problem within AutoML. While evolution has been a popular tool to search for better ML programs, using learning itself to guide the search has been less successful and less understood on harder problems but has the promise to dramatically increase the speed and final performance of the optimization process. We propose guiding evolution with a binary discriminator, trained online to distinguish which program is better given a pair of programs. The discriminator selects better programs without having to perform a costly evaluation and thus speed up the convergence of evolution. Our method can encode a wide variety of ML components including symbolic optimizers, neural architectures, RL loss functions, and symbolic regression equations with the same directed acyclic graph representation. By combining this representation with modern GNNs and an adaptive mutation strategy, we demonstrate our method can speed up evolution across a set of diverse problems including a 3.7x speedup on the symbolic search for ML optimizers and a 4x speedup for RL loss functions.
title Guided Evolution with Binary Discriminators for ML Program Search
topic Machine Learning
Neural and Evolutionary Computing
url https://arxiv.org/abs/2402.05821