<p>Statistical learning refers to the ability to identify structure in the input based on its statistical properties. For many linguistic structures, the relevant statistical features are distributional: They are related to the frequency and variability of exemplars in the input. These distributional regularities have been suggested to play a role in many different aspects of language learning, including phonetic categories, using phonemic distinctions in word learning, and discovering non-adjacent relations. On the surface, these different aspects share few commonalities. Despite this, we demonstrate that the same computational framework can account for learning in all of these tasks. These results support two conclusions. The first is tha...
In the present study we provide empirical evidence that human learners succeed in an artificial-gram...
This volume brings together contributors from cognitive psychology, theoretical and applied linguist...
Statistical learning, the ability to extract regularities from input (e.g., in language), is likely ...
Statistical learning refers to the ability to identify structure in the input based on its statistic...
Acquiring language is notoriously complex, yet for the majority of children this feat is accomplishe...
245 pagesUnderstanding the computations involved in language acquisition is a central topic in cogni...
Recent computational research on natural language corpora has revealed that relatively simple statis...
Opportunities for associationist learning of word meaning, where a word is heard or read contemperan...
Opportunities for associationist learning of word meaning, where a word is heard or read contemperan...
This paper shows how to define probability distributions over linguistically realistic syntactic str...
Statistical learning-the process of extracting patterns from distributional properties of the input-...
Humans’ high sensitivity to the structure in their environment is explained as statistical learning....
<p>The term <em>statistical learning</em> was originally used to describe sensitivity to conditional...
Individuals are readily able to extract and encode statistical information from their environment (o...
The research presented in this PhD dissertation provides a computational perspective on Semantic Imp...
In the present study we provide empirical evidence that human learners succeed in an artificial-gram...
This volume brings together contributors from cognitive psychology, theoretical and applied linguist...
Statistical learning, the ability to extract regularities from input (e.g., in language), is likely ...
Statistical learning refers to the ability to identify structure in the input based on its statistic...
Acquiring language is notoriously complex, yet for the majority of children this feat is accomplishe...
245 pagesUnderstanding the computations involved in language acquisition is a central topic in cogni...
Recent computational research on natural language corpora has revealed that relatively simple statis...
Opportunities for associationist learning of word meaning, where a word is heard or read contemperan...
Opportunities for associationist learning of word meaning, where a word is heard or read contemperan...
This paper shows how to define probability distributions over linguistically realistic syntactic str...
Statistical learning-the process of extracting patterns from distributional properties of the input-...
Humans’ high sensitivity to the structure in their environment is explained as statistical learning....
<p>The term <em>statistical learning</em> was originally used to describe sensitivity to conditional...
Individuals are readily able to extract and encode statistical information from their environment (o...
The research presented in this PhD dissertation provides a computational perspective on Semantic Imp...
In the present study we provide empirical evidence that human learners succeed in an artificial-gram...
This volume brings together contributors from cognitive psychology, theoretical and applied linguist...
Statistical learning, the ability to extract regularities from input (e.g., in language), is likely ...