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Enabling Robots to Understand Incomplete Natural Language Instructions Using Commonsense Reasoning

机译:使用常识推理使机器人能够理解不完整的自然语言指令

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Enabling robots to understand instructions provided via spoken natural language would facilitate interaction between robots and people in a variety of settings in homes and workplaces. However, natural language instructions are often missing information that would be obvious to a human based on environmental context and common sense, and hence does not need to be explicitly stated. In this paper, we introduce Language-Model-based Commonsense Reasoning (LMCR), a new method which enables a robot to listen to a natural language instruction from a human, observe the environment around it, and automatically fill in information missing from the instruction using environmental context and a new commonsense reasoning approach. Our approach first converts an instruction provided as unconstrained natural language into a form that a robot can understand by parsing it into verb frames. Our approach then fills in missing information in the instruction by observing objects in its vicinity and leveraging commonsense reasoning. To learn commonsense reasoning automatically, our approach distills knowledge from large unstructured textual corpora by training a language model. Our results show the feasibility of a robot learning commonsense knowledge automatically from web-based textual corpora, and the power of learned commonsense reasoning models in enabling a robot to autonomously perform tasks based on incomplete natural language instructions.
机译:使机器人能够理解通过口头自然语言提供的指令,将促进机器人与人在家庭和工作场所中各种环境中的交互。然而,基于环境环境和常识,自然语言指令通常会丢失对人类显而易见的信息,因此无需明确说明。在本文中,我们介绍了基于语言模型的常识推理(LMCR),这是一种使机器人能够听取人类的自然语言指令,观察周围环境并自动填充指令中缺少的信息的新方法使用环境上下文和新的常识推理方法。我们的方法首先将不受约束的自然语言提供的指令转换为机器人可以通过将其解析为动词框架而理解的形式。然后,我们的方法通过观察指令附近的物体并利用常识推理来填补指令中的缺失信息。为了自动学习常识推理,我们的方法通过训练语言模型从大型非结构化文本语料库中提取知识。我们的结果表明,机器人可以从基于Web的文本语料库中自动学习常识知识的可行性,以及所学常识推理模型的强大功能,使机器人能够根据不完整的自然语言指令自主执行任务。

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