Toward Human-like Billiard AI Bot Based on Backward Induction and Machine Learning

Kuei Gu Tung, Sheng Wen Wang, Wen-Kai Tai, Der-Lor Way, Chinchen Chang
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引用次数: 2

Abstract

A human-like billiard AI bot approach is proposed in this paper. We analyzed actual game records of human players to obtain feature vectors. The Backward Induction algorithm and machine learning are then proposed to imitate decisions by human players. A run-out sequence is searched backwardly with the assists from heuristics and predictions of neural network models. Through the planning process, a strike unit is found to help guide the physics simulator. With our AI suggestion of strategies, it avoids being over-dependent on the robust and precise physics simulation. Also, we defined an appropriate approach to gauge the human likeness of AI and evaluate our proposed methods. The experimental results show that our method overall is more similar to the way how human players play than that of original AI.
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基于逆向归纳和机器学习的仿人台球人工智能机器人研究
本文提出了一种类人台球人工智能机器人方法。我们通过分析人类玩家的实际游戏记录来获得特征向量。然后提出了逆向归纳算法和机器学习来模仿人类玩家的决策。在神经网络模型的启发式和预测的帮助下,对运行序列进行反向搜索。通过规划过程,找到一个打击单元来帮助指导物理模拟器。通过我们的AI建议策略,它可以避免过度依赖于稳健和精确的物理模拟。此外,我们定义了一种适当的方法来衡量人工智能的人类相似性并评估我们提出的方法。实验结果表明,我们的方法总体上更接近于人类玩家的游戏方式,而不是原始AI。
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