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A Probabilistic Approach to Unsupervised Induction of Combinatory Categorial Grammar in Situated Human-Robot Interaction

机译:人机交互中无分类归纳语法无监督归纳的概率方法

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Robots are progressively moving into spaces that have been primarily shaped by human agency; they collaborate with human users in different tasks that require them to understand human language so as to behave appropriately in space. To this end, a stubborn challenge that we address in this paper is inferring the syntactic structure of language, which embraces grounding parts of speech (e.g., nouns, verbs, and prepositions)through visual perception, and induction of Combinatory Categorial Grammar (CCG)in situated human-robot interaction. This could pave the way towards making a robot able to understand the syntactic relationships between words (i.e., understand phrases), and consequently the meaning of human instructions during interaction, which is a future scope of this current study.
机译:机器人正在逐步移入主要由人为因素塑造的空间。他们与人类用户合作完成不同的任务,这些任务要求他们理解人类的语言,以便在太空中适当表现。为此,我们在本文中要解决的一个顽固挑战是推断语言的句法结构,该结构通过视觉感知和归纳归类语法(CCG)来涵盖语音的基础部分(例如,名词,动词和介词)在人机交互中。这可以为使机器人能够理解单词之间的句法关系(即理解短语)以及因此在交互过程中人类指令的含义铺平道路,这是本研究的未来范围。

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