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Modeling Incremental Language Comprehension in the Brain with Combinatory Categorial Grammar

机译:用组合范畴语法模拟大脑中的增量语言理解

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Hierarchical sentence structure plays a role in word-by-word human sentence comprehension, but it remains unclear how best to characterize this structure and unknown how exactly it would be recognized in a step-by-step process model. With a view towards sharpening this picture, we model the time course of hemodynamic activity within the brain during an extended episode of naturalistic language comprehension using Combinatory Categorial Grammar (CCG). CCG has well-delined incremental parsing algorithms, surface compositional semantics, and can explain long-range dependencies as well as complicated cases of coordination. We find that CCG-derived predictors improve a regression model of fMRI time course in six language-relevant brain regions, over and above predictors derived from context-free phrase structure. Adding a special Revealing operator to CCG parsing, one designed to handle right-adjunction, improves the fit in three of these regions. This evidence for CCG from neuroimaging bolsters the more general case for mildly context-sensitive grammars in the cognitive science of language.
机译:层次化的句子结构在逐字逐句的人类句子理解中起着重要作用,但目前尚不清楚如何最好地描述这种结构,也不清楚在逐步过程模型中如何准确地识别这种结构。为了使这幅图更清晰,我们使用组合范畴语法(CCG)模拟了自然语言理解的一个扩展插曲中大脑内血流动力学活动的时间过程。CCG拥有完善的增量解析算法、表面合成语义,可以解释长期依赖关系以及复杂的协调情况。我们发现,CCG衍生的预测因子改善了六个语言相关脑区的功能磁共振成像时间过程回归模型,超过了上下文无关短语结构衍生的预测因子。在CCG解析中添加一个特殊的揭示操作符,一个用于处理正确附加的操作符,可以改善其中三个区域的匹配。来自神经影像学的CCG证据支持了语言认知科学中轻度上下文敏感语法的更一般情况。

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