Using Human-Guided Causal Knowledge for More Generalized Robot Task Planning
Semir Tatlidil, Yanqi Liu, Emily Sheetz, R. Iris Bahar, Steven Sloman
- 发表年份
- 2021
- 访问权限
- 开放获取
摘要
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 naïve 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.
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