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Regret-Guided Search Control for Efficient Learning in AlphaZero

arXiv:2602.20809v1h-index: 1Has Code
Originality Highly original
AI Analysis

This work addresses the problem of slow learning in AI game-playing agents for researchers and practitioners, offering an incremental improvement over prior search control methods.

The paper tackles the inefficiency of reinforcement learning agents like AlphaZero by introducing Regret-Guided Search Control (RGSC), which identifies and reuses high-regret states to accelerate learning, resulting in average Elo gains of 77 and 89 over baselines and improving win rates against KataGo from 69.3% to 78.2%.

Reinforcement learning (RL) agents achieve remarkable performance but remain far less learning-efficient than humans. While RL agents require extensive self-play games to extract useful signals, humans often need only a few games, improving rapidly by repeatedly revisiting states where mistakes occurred. This idea, known as search control, aims to restart from valuable states rather than always from the initial state. In AlphaZero, prior work Go-Exploit applies this idea by sampling past states from self-play or search trees, but it treats all states equally, regardless of their learning potential. We propose Regret-Guided Search Control (RGSC), which extends AlphaZero with a regret network that learns to identify high-regret states, where the agent's evaluation diverges most from the actual outcome. These states are collected from both self-play trajectories and MCTS nodes, stored in a prioritized regret buffer, and reused as new starting positions. Across 9x9 Go, 10x10 Othello, and 11x11 Hex, RGSC outperforms AlphaZero and Go-Exploit by an average of 77 and 89 Elo, respectively. When training on a well-trained 9x9 Go model, RGSC further improves the win rate against KataGo from 69.3% to 78.2%, while both baselines show no improvement. These results demonstrate that RGSC provides an effective mechanism for search control, improving both efficiency and robustness of AlphaZero training. Our code is available at https://rlg.iis.sinica.edu.tw/papers/rgsc.

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