Google Inc.
Top Cogn Sci. 2013 Jul;5(3):425-51. doi: 10.1111/tops.12023. Epub 2013 Apr 24.
Probabilistic models of sentence comprehension are increasingly relevant to questions concerning human language processing. However, such models are often limited to syntactic factors. This restriction is unrealistic in light of experimental results suggesting interactions between syntax and other forms of linguistic information in human sentence processing. To address this limitation, this article introduces two sentence processing models that augment a syntactic component with information about discourse co-reference. The novel combination of probabilistic syntactic components with co-reference classifiers permits them to more closely mimic human behavior than existing models. The first model uses a deep model of linguistics, based in part on probabilistic logic, allowing it to make qualitative predictions on experimental data; the second model uses shallow processing to make quantitative predictions on a broad-coverage reading-time corpus.
句子理解的概率模型越来越与人类语言处理相关的问题相关。然而,这样的模型往往仅限于句法因素。鉴于实验结果表明,在人类句子处理中,句法与其他形式的语言信息之间存在相互作用,这种限制是不现实的。为了解决这个限制,本文引入了两个句子处理模型,它们在句法成分中增加了关于话语共指的信息。概率句法成分与共指分类器的新颖组合允许它们比现有模型更能模拟人类行为。第一个模型使用基于概率逻辑的语言学深度模型,允许它对实验数据进行定性预测;第二个模型使用浅层处理对广泛覆盖的阅读时间语料库进行定量预测。