The use of language is one of the defining features of human cognition. Focusing here on two key features of language, productivity and robustness, I examine how basic questions regarding linguistic representation can be approached with the help of probabilistic generative language models, or PGLMs. These statistical models, which capture aspects of linguistic structure in terms of distributions over events, can serve as both the product of language learning and as prior knowledge in real-time language processing. In the first two chapters, I show how PGLMs can be used to make inferences about the nature of people's linguistic representations. In Chapter 1, I look at the representations of language learners, tracing the earliest evidence fo...
Acquiring language is notoriously complex, yet for the majority of children this feat is accomplishe...
Grammar-based natural language processing has reached a level where it can `understand' language to ...
This paper shows how to define probability distributions over linguistically realistic syntactic str...
There is much debate over the degree to which language learning is governed by innate language-speci...
There is much debate over the degree to which language learning is governed by innate language-speci...
Building models of language is a central task in natural language processing. Traditionally, languag...
<p>Abstract copyright data collection owner.</p>The files contain crowd sourced (Amazon Mechanical T...
Probabilistic methods are providing new explanatory approaches to fundamental cognitive science ques...
Computational models of early language acquisition 2 How do children acquire the sounds, words, and ...
Accounts of language acquisition differ significantly in their treatment of the role of prediction i...
Recent computational research on natural language corpora has revealed that relatively simple statis...
Cognitive neuroscientists of language comprehension study how neural computations relate to cognitiv...
The question of whether humans represent grammatical knowledge as a binary condition on membership i...
Words are the essence of communication: they are the building blocks of any language. Learning the m...
This article deals with gradience in human sentence processing. We review the experimental evidence ...
Acquiring language is notoriously complex, yet for the majority of children this feat is accomplishe...
Grammar-based natural language processing has reached a level where it can `understand' language to ...
This paper shows how to define probability distributions over linguistically realistic syntactic str...
There is much debate over the degree to which language learning is governed by innate language-speci...
There is much debate over the degree to which language learning is governed by innate language-speci...
Building models of language is a central task in natural language processing. Traditionally, languag...
<p>Abstract copyright data collection owner.</p>The files contain crowd sourced (Amazon Mechanical T...
Probabilistic methods are providing new explanatory approaches to fundamental cognitive science ques...
Computational models of early language acquisition 2 How do children acquire the sounds, words, and ...
Accounts of language acquisition differ significantly in their treatment of the role of prediction i...
Recent computational research on natural language corpora has revealed that relatively simple statis...
Cognitive neuroscientists of language comprehension study how neural computations relate to cognitiv...
The question of whether humans represent grammatical knowledge as a binary condition on membership i...
Words are the essence of communication: they are the building blocks of any language. Learning the m...
This article deals with gradience in human sentence processing. We review the experimental evidence ...
Acquiring language is notoriously complex, yet for the majority of children this feat is accomplishe...
Grammar-based natural language processing has reached a level where it can `understand' language to ...
This paper shows how to define probability distributions over linguistically realistic syntactic str...