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Learning to Interpret Natural Language Commands through Human-Robot Dialog

机译:学习通过人机对话框来解释自然语言命令

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Intelligent robots frequently need to understand requests from naive users through natural language. Previous approaches either cannot account for language variation, e.g., keyword search, or require gathering large annotated corpora, which can be expensive and cannot adapt to new variation. We introduce a dialog agent for mobile robots that understands human instructions through semantic parsing, actively resolves ambiguities using a dialog manager, and incrementally learns from human-robot conversations by inducing training data from user paraphrases. Our dialog agent is implemented and tested both on a web interface with hundreds of users via Mechanical Turk and on a mobile robot over several days, tasked with understanding navigation and delivery requests through natural language in an office environment. In both contexts, We observe significant improvements in user satisfaction after learning from conversations.
机译:智能机器人经常需要通过自然语言了解天真用户的请求。以前的方法无法解释语言变化,例如关键字搜索,或者需要收集大型注释的语料库,这可能是昂贵的并且无法适应新的变化。我们向移动机器人推出一个对话框,用于通过语义解析了解人类指令,积极解决了使用对话管理器的歧义,并通过从用户释义中引导培训数据来逐步从人机对话中学习。我们的对话代理通过Mechanical Turk和移动机器人在几天内与数百名用户的Web界面进行实施和测试,任务是通过办公环境中的自然语言理解导航和交付请求。在这两种情况下,我们在从对话中学习后,我们观察用户满意度的重大改进。

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