A major challenge in research involving artificial intelligence (AI) is the development of algorithms that can find solutions to problems that can generalize to different environments and tasks. Unlike AI, humans are adept at finding solutions that can transfer. We hypothesize this is because their solutions are informed by causal models. We propose to use human-guided causal knowledge to help robots find solutions that can generalize to a new environment. We develop and test the feasibility of a language interface that na\"ive participants can use to communicate these causal models to a planner. We find preliminary evidence that participants are able to use our interface and generate causal models that achieve near-generalization. We outline an experiment aimed at testing far-generalization using our interface and describe our longer terms goals for these causal models.
翻译:涉及人工智能(AI)的研究所面临的一项重大挑战是开发算法,以找到解决办法解决可以概括到不同环境和任务的问题。与AI不同的是,人类很擅长找到可以转移的解决方案。我们假设这是因为他们的解决方案以因果模型为依据。我们提议使用人制因果知识帮助机器人找到能够概括到新环境的解决方案。我们开发并测试一个语言界面的可行性,让受感染的参与者能够将这些因果模型传递给规划者。我们找到了初步证据,表明参与者能够使用我们的界面,并生成能够实现近乎普遍性的因果模型。我们概述了一个实验,目的是利用我们的界面测试广义化,并描述这些因果模型的较长期限目标。