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Main Authors: Li, Yanjie, Li, Weijun, Yu, Lina, Wu, Min, Liu, Jingyi, Li, Wenqiang, Hao, Meilan, Wei, Shu, Deng, Yusong
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2401.14424
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author Li, Yanjie
Li, Weijun
Yu, Lina
Wu, Min
Liu, Jingyi
Li, Wenqiang
Hao, Meilan
Wei, Shu
Deng, Yusong
author_facet Li, Yanjie
Li, Weijun
Yu, Lina
Wu, Min
Liu, Jingyi
Li, Wenqiang
Hao, Meilan
Wei, Shu
Deng, Yusong
contents Finding a concise and interpretable mathematical formula that accurately describes the relationship between each variable and the predicted value in the data is a crucial task in scientific research, as well as a significant challenge in artificial intelligence. This problem is referred to as symbolic regression, which is an NP-hard problem. In the previous year, a novel symbolic regression methodology utilizing Monte Carlo Tree Search (MCTS) was advanced, achieving state-of-the-art results on a diverse range of datasets. although this algorithm has shown considerable improvement in recovering target expressions compared to previous methods, the lack of guidance during the MCTS process severely hampers its search efficiency. Recently, some algorithms have added a pre-trained policy network to guide the search of MCTS, but the pre-trained policy network generalizes poorly. To optimize the trade-off between efficiency and versatility, we introduce SR-GPT, a novel algorithm for symbolic regression that integrates Monte Carlo Tree Search (MCTS) with a Generative Pre-Trained Transformer (GPT). By using GPT to guide the MCTS, the search efficiency of MCTS is significantly improved. Next, we utilize the MCTS results to further refine the GPT, enhancing its capabilities and providing more accurate guidance for the MCTS. MCTS and GPT are coupled together and optimize each other until the target expression is successfully determined. We conducted extensive evaluations of SR-GPT using 222 expressions sourced from over 10 different symbolic regression datasets. The experimental results demonstrate that SR-GPT outperforms existing state-of-the-art algorithms in accurately recovering symbolic expressions both with and without added noise.
format Preprint
id arxiv_https___arxiv_org_abs_2401_14424
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Discovering Mathematical Formulas from Data via GPT-guided Monte Carlo Tree Search
Li, Yanjie
Li, Weijun
Yu, Lina
Wu, Min
Liu, Jingyi
Li, Wenqiang
Hao, Meilan
Wei, Shu
Deng, Yusong
Machine Learning
Artificial Intelligence
Finding a concise and interpretable mathematical formula that accurately describes the relationship between each variable and the predicted value in the data is a crucial task in scientific research, as well as a significant challenge in artificial intelligence. This problem is referred to as symbolic regression, which is an NP-hard problem. In the previous year, a novel symbolic regression methodology utilizing Monte Carlo Tree Search (MCTS) was advanced, achieving state-of-the-art results on a diverse range of datasets. although this algorithm has shown considerable improvement in recovering target expressions compared to previous methods, the lack of guidance during the MCTS process severely hampers its search efficiency. Recently, some algorithms have added a pre-trained policy network to guide the search of MCTS, but the pre-trained policy network generalizes poorly. To optimize the trade-off between efficiency and versatility, we introduce SR-GPT, a novel algorithm for symbolic regression that integrates Monte Carlo Tree Search (MCTS) with a Generative Pre-Trained Transformer (GPT). By using GPT to guide the MCTS, the search efficiency of MCTS is significantly improved. Next, we utilize the MCTS results to further refine the GPT, enhancing its capabilities and providing more accurate guidance for the MCTS. MCTS and GPT are coupled together and optimize each other until the target expression is successfully determined. We conducted extensive evaluations of SR-GPT using 222 expressions sourced from over 10 different symbolic regression datasets. The experimental results demonstrate that SR-GPT outperforms existing state-of-the-art algorithms in accurately recovering symbolic expressions both with and without added noise.
title Discovering Mathematical Formulas from Data via GPT-guided Monte Carlo Tree Search
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2401.14424