Models of eye-movement control during reading, developed largely within psychology, usually focus on visual, attentional, and motor processes but neglect post-lexical language processing; by contrast, models of sentence comprehension processes, developed largely within psycholinguistics, generally focus only on post-lexical language processes. We present a model that combines these two research threads, by integrating eye-movement control and sentence processing. Developing such an integrated model is extremely challenging and computationally demanding, but such an integration is an important step toward complete mathematical models of natural language comprehension in reading. We combine the SWIFT model of eye-movement control (Engbert et al., Psychological Review, 112, 2005, pp. 777-813) with key components of the Lewis and Vasishth sentence processing model (Lewis and Vasishth, Cognitive Science, 29, 2005, pp. 375-419). This integration becomes possible, for the first time, due in part to recent advances in successful parameter identification in dynamical models, which allows us to investigate profile log-likelihoods for individual model parameters. We present a fully implemented proof-of-concept model demonstrating how such an integrated model can be achieved; our approach includes Bayesian model inference with Markov Chain Monte Carlo (MCMC) sampling as a key computational tool. The integrated model, SEAM, can successfully reproduce eye movement patterns that arise due to similarity-based interference in reading. To our knowledge, this is the first-ever integration of a complete process model of eye-movement control with linguistic dependency completion processes in sentence comprehension. In future work, this proof of concept model will need to be evaluated using a comprehensive set of benchmark data.
翻译:阅读过程中眼睛运动控制模型,主要在心理学内部开发,通常侧重于视觉、注意力和运动过程,但忽视了后灵活语言处理;相比之下,主要在精神语言学范围内开发的句子理解过程模型,一般只侧重于后传统语言过程。我们展示了一种模型,将这两个研究线索结合起来,将眼动控制和句子处理结合起来。开发这样一个综合模型具有极大的挑战性和计算上的要求,但这种整合是走向阅读中自然语言理解完整数学模型的一个重要步骤。我们把SWIFT眼动控制模型(Engbert等人,《心理审查》,112,2005年,第777-813页)与刘易斯和瓦西什句处理模型的关键组成部分(Lewis和Vasishth, Cognitive科学,2005年,第29页,第375-419页)。这种整合是可能的,其部分原因是动态模型中成功的参数识别模型的进展,这使我们能够调查个人模型模型参数配置的逻辑-类似模型参数参数(Engbertal等人,2005年,第777-813页)和Lis and Vasing 句子处理模型的主要模型计算方法。我们用一个完全的模型来进行模拟模拟的模拟的模拟的模拟的模拟的模拟的模拟的模拟的模拟,可以用来模拟的模拟的模拟的模拟的模拟的模拟的模拟的模拟的模拟的模拟的模拟的模拟的模拟的模拟的模拟的模拟的模拟的模拟的模拟的计算。</s>