强化学习
计算机科学
人工智能
过程(计算)
自治
理解力
可信赖性
机器学习
人机交互
计算机安全
政治学
操作系统
程序设计语言
法学
作者
Daoming Lyu,Fangkai Yang,Hugh Kwon,Bo Liu,Wen Dong,Levent Yılmaz
出处
期刊:Frontiers in artificial intelligence and applications
日期:2021-12-22
被引量:2
摘要
Human-robot interactive decision-making is increasingly becoming ubiquitous, and explainability is an influential factor in determining the reliance on autonomy. However, it is not reasonable to trust systems beyond our comprehension, and typical machine learning and data-driven decision-making are black-box paradigms that impede explainability. Therefore, it is critical to establish computational efficient decision-making mechanisms enhanced by explainability-aware strategies. To this end, we propose the Trustworthy Decision-Making (TDM), which is an explainable neuro-symbolic approach by integrating symbolic planning into hierarchical reinforcement learning. The framework of TDM enables the subtask-level explainability from the causal relational and understandable subtasks. Besides, TDM also demonstrates the advantage of the integration between symbolic planning and reinforcement learning, reaping the benefits of both worlds. Experimental results validate the effectiveness of proposed method while improving the explainability in the process of decision-making.
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