Improving Monte Carlo Tree Search for Symbolic Regression
–Neural Information Processing Systems
Symbolic regression aims to discover concise, interpretable mathematical expressions that satisfy desired objectives, such as fitting data, posing a highly combinatorial optimization problem. While genetic programming has been the dominant approach, recent efforts have explored reinforcement learning methods for improving search efficiency. Monte Carlo Tree Search (MCTS), with its ability to balance exploration and exploitation through guided search, has emerged as a promising technique for symbolic expression discovery.
Neural Information Processing Systems
Jun-11-2026, 17:28:06 GMT
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