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Abstract Meaning Representation for HumanRobotDialogue

Claire Bonial, Lucia Donatelli, Jessica Ervin, Clare R. Voss

发表年份
2019
引用次数
4
访问权限
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摘要

In this research, we begin to tackle the\nchallenge of natural language understanding\n(NLU) in the context of the development of\na robot dialogue system. We explore the adequacy\nof Abstract Meaning Representation\n(AMR) as a conduit for NLU. First, we consider\nthe feasibility of using existing AMR\nparsers for automatically creating meaning\nrepresentations for robot-directed transcribed\nspeech data. We evaluate the quality of output\nof two parsers on this data against a manually\nannotated gold-standard data set. Second,\nwe evaluate the semantic coverage and distinctions\nmade in AMR overall: how well does it\ncapture the meaning and distinctions needed\nin our collaborative human-robot dialogue domain?\nWe find that AMR has gaps that align\nwith linguistic information critical for effective\nhuman-robot collaboration in search and\nnavigation tasks, and we present task-specific\nmodifications to AMR to address the deficiencies.

关键词

Meaning (existential)Representation (politics)Computer scienceArtificial intelligenceCommunicationSociologyEpistemologyPolitical sciencePhilosophyPolitics

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