Department of Language Science, University of California, Irvine.
Department of Brain and Cognitive Sciences, Massachusetts Institute of Technology.
Cogn Sci. 2020 Mar;44(3):e12814. doi: 10.1111/cogs.12814.
A key component of research on human sentence processing is to characterize the processing difficulty associated with the comprehension of words in context. Models that explain and predict this difficulty can be broadly divided into two kinds, expectation-based and memory-based. In this work, we present a new model of incremental sentence processing difficulty that unifies and extends key features of both kinds of models. Our model, lossy-context surprisal, holds that the processing difficulty at a word in context is proportional to the surprisal of the word given a lossy memory representation of the context-that is, a memory representation that does not contain complete information about previous words. We show that this model provides an intuitive explanation for an outstanding puzzle involving interactions of memory and expectations: language-dependent structural forgetting, where the effects of memory on sentence processing appear to be moderated by language statistics. Furthermore, we demonstrate that dependency locality effects, a signature prediction of memory-based theories, can be derived from lossy-context surprisal as a special case of a novel, more general principle called information locality.
人类句子处理研究的一个关键组成部分是描述与语境中单词理解相关的处理难度。能够解释和预测这种难度的模型可以大致分为两类,基于预期的和基于记忆的。在这项工作中,我们提出了一种新的句子处理难度的增量模型,它统一并扩展了这两种模型的关键特征。我们的模型,即有损失的语境意外性,认为在语境中处理一个单词的难度与给定语境的有损失记忆表示的单词的意外性成正比——也就是说,记忆表示中不包含关于前一个单词的完整信息。我们表明,该模型为一个涉及记忆和预期相互作用的突出难题提供了一个直观的解释:语言相关的结构遗忘,其中记忆对句子处理的影响似乎受到语言统计数据的调节。此外,我们证明,依赖局部性效应,即基于记忆理论的一个标志性预测,可以从有损失的语境意外性中推导出来,这是一种新的、更普遍的称为信息局部性的原则的特例。