AI Agents 相关度: 8/10

Oracle-Guided Soft Shielding for Safe Move Prediction in Chess

Prajit T Rajendran, Fabio Arnez, Huascar Espinoza, Agnes Delaborde, Chokri Mraidha
arXiv: 2603.08506v1 发布: 2026-03-09 更新: 2026-03-09

AI 摘要

OGSS方法在模仿学习中结合先验知识,提升了智能体在探索过程中的安全性,应用于象棋博弈。

主要贡献

  • 提出Oracle-Guided Soft Shielding (OGSS)框架
  • 使用先验知识(Stockfish评估)学习概率安全模型
  • 在象棋环境中验证了OGSS在提升安全性的同时支持更广泛的探索

方法论

OGSS首先训练策略模型和风险模型,然后利用效用函数结合二者进行决策,平衡性能和安全性。

原文摘要

In high stakes environments, agents relying purely on imitation learning or reinforcement learning often struggle to avoid safety-critical errors during exploration. Existing reinforcement learning approaches for environments such as chess require hundreds of thousands of episodes and substantial computational resources to converge. Imitation learning, on the other hand, is more sample efficient but is brittle under distributional shift and lacks mechanisms for proactive risk avoidance. In this work, we propose Oracle-Guided Soft Shielding (OGSS), a simple yet effective framework for safer decision-making, enabling safe exploration by learning a probabilistic safety model from oracle feedback in an imitation learning setting. Focusing on the domain of chess, we train a model to predict strong moves based on past games, and separately learn a blunder prediction model from Stockfish evaluations to estimate the tactical risk of each move. During inference, the agent first generates a set of candidate moves and then uses the blunder model to determine high-risk options, and uses a utility function combining the predicted move likelihood from the policy model and the blunder probability to select actions that strike a balance between performance and safety. This enables the agent to explore and play competitively while significantly reducing the chance of tactical mistakes. Across hundreds of games against a strong chess engine, we compare our approach with other methods in the literature, such as action pruning, SafeDAgger, and uncertainty-based sampling. Our results demonstrate that OGSS variants maintain a lower blunder rate even as the agent's exploration ratio is increased by several folds, highlighting its ability to support broader exploration without compromising tactical soundness.

标签

安全强化学习 模仿学习 博弈论 象棋

arXiv 分类

cs.LG cs.AI