We present a novel framework to generate causal explanations for the decisions of agents in stochastic sequential multi-agent environments. Explanations are given via natural language conversations answering a wide range of user queries and requiring associative, interventionist, or counterfactual causal reasoning. Instead of assuming any specific causal graph, our method relies on a generative model of interactions to simulate counterfactual worlds which are used to identify the salient causes behind decisions. We implement our method for motion planning for autonomous driving and test it in simulated scenarios with coupled interactions. Our method correctly identifies and ranks the relevant causes and delivers concise explanations to the users' queries.
翻译:我们提出了一个新框架,为在随机相继多试剂环境中代理商的决定提供因果解释;通过自然语言对话进行解释,回答广泛的用户询问,需要关联性、干预性或反事实性因果关系推理;我们的方法不是假设任何具体的因果图,而是依靠一个模拟反现实世界的典型互动模式,用以确定决定背后的突出原因;我们采用自主驾驶的机动规划方法,并在模拟的假想中测试它;我们的方法正确地辨别和排列相关原因,并对用户的询问提供简明的解释。