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Learning Semantic Correspondences with Less Supervision

机译:以较少的监督学习语义对应

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摘要

A central problem in grounded language acquisition is learning the correspondences between a rich world state and a stream of text which references that world state. To deal with the high degree of ambiguity present in this setting, we present a generative model that simultaneously segments the text into utterances and maps each utterance to a meaning representation grounded in the world state. We show that our model generalizes across three domains of increasing difficulty-Robocup sportscasting, weather forecasts (a new domain), and NFL recaps.
机译:扎实的语言习得中的中心问题是学习丰富世界状态与引用该世界状态的文本流之间的对应关系。为了解决这种情况下存在的高度歧义,我们提供了一个生成模型,该模型可以同时将文本分割成各种言语,并将每种言语映射到以世界状态为基础的含义表示。我们证明了我们的模型可以概括为难度不断增加的三个领域:Robocup体育广播,天气预报(一个新领域)和NFL回顾。

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