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Contributions of Propositional Content and Syntactic Category Information in Sentence Processing

机译:命题内容和句法范畴信息在句子处理中的作用

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Expectation-based theories of sentence processing posit that processing difficulty is determined by predictability in context. While predictability quantified via surprisal has gained empirical support, this representation-agnostic measure leaves open the question of how to best approximate the human comprehender's latent probability model. This work presents an incremental left-corner parser that incorporates information about both propositional content and syntactic categories into a single probability model. This parser can be trained to make parsing decisions conditioning on only one source of information, thus allowing a clean ablation of the relative contribution of propositional content and syntactic category information. Regression analyses show that surprisal estimates calculated from the full parser make a significant contribution to predicting self-paced reading times over those from the parser without syntactic category information, as well as a significant contribution to predicting eye-gaze durations over those from the parser without propositional content information. Taken together, these results suggest a role for propositional content and syntactic category information in incremental sentence processing.
机译:基于期望的句子加工理论认为,句子加工的难度取决于语境的可预测性。虽然通过惊奇量化的可预测性已经获得了经验支持,但这种表示不可知的度量留下了一个悬而未决的问题,即如何最好地近似人类理解者的潜在概率模型。这项工作提出了一个增量左角解析器,它将命题内容和语法类别的信息合并到一个单一的概率模型中。这种解析器可以被训练为仅根据一个信息源做出解析决策,从而可以清晰地消除命题内容和句法类别信息的相对贡献。回归分析表明,与没有句法类别信息的解析器相比,从完整解析器计算的出人意料的估计对预测自定步调阅读时间做出了显著贡献,并且与没有命题内容信息的解析器相比,对预测眼睛注视持续时间做出了显著贡献。综上所述,这些结果表明命题内容和句法类别信息在增量句子处理中起着重要作用。

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