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A Framework for Modeling the Interaction of Syntactic Processing and Eye Movement Control

机译:句法处理与眼球运动控制交互作用的建模框架

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We explore the interaction between oculomotor control and language comprehension on the sentence level using two well-tested computational accounts of parsing difficulty. Previous work (Boston, Hale, Vasishth, & Kliegl, 2011) has shown that surprisal (Hale, 2001; Levy, 2008) and cue-based memory retrieval (Lewis & Vasishth, 2005) are significant and complementary predictors of reading time in an eyetracking corpus. It remains an open question how the sentence processor interacts with oculomotor control. Using a simple linking hypothesis proposed in Reichle, Warren, and McConnell (2009), we integrated both measures with the eye movement model EMMA (Salv-ucci, 2001) inside the cognitive architecture ACT-R (Anderson et al., 2004). We built a reading model that could initiate short "Time Out regressions" (Mitchell, Shen, Green, & Hodgson, 2008) that compensate for slow postlexical processing. This simple interaction enabled the model to predict the re-reading of words based on parsing difficulty. The model was evaluated in different configurations on the prediction of frequency effects on the Potsdam Sentence Corpus. The extension of EMMA with postlexical processing improved its predictions and reproduced re-reading rates and durations with a reasonable fit to the data. This demonstration, based on simple and independently motivated assumptions, serves as a foundational step toward a precise investigation of the interaction between high-level language processing and eye movement control.
机译:我们使用两个经过充分测试的解析难度计算帐户,探讨了动眼控制与语言理解在句子水平上的相互作用。先前的工作(波士顿,黑尔,瓦西斯和克利格,2011年)表明,惊喜(海尔,2001年;利维,2008年)和基于提示的记忆检索(刘易斯和瓦西斯,2005年)是阅读时间的重要且互补的预测因子。眼动追踪语料库。句子处理器如何与动眼神经控制相互作用仍然是一个悬而未决的问题。使用Reichle,Warren和McConnell(2009)中提出的简单链接假设,我们将这两种度量与眼睛运动模型EMMA(Salv-ucci,2001)整合到了认知体系ACT-R(Anderson等,2004)中。我们建立了一个阅读模型,该模型可以启动简短的“超时回归”(Mitchell,Shen,Green和Hodgson,2008年),以补偿词法处理缓慢。这种简单的交互作用使模型能够根据解析难度来预测单词的重读。在预测波茨坦句子语料库频率影响的不同配置下对模型进行了评估。使用词法后处理扩展EMMA改进了其预测,并以合理的数据重现了重读率和持续时间。该演示基于简单且独立动机的假设,是朝着精确研究高级语言处理与眼睛运动控制之间的相互作用的基础步骤。

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