Building models of language is a central task in natural language processing. Traditionally, language has been modeled with manually-constructed grammars that describe which strings are grammatical and which are not; however, with the recent availability of massive amounts of on-line text, statistically-trained models are an attractive alternative. These models are generally probabilistic, yielding a score reflecting sentence frequency instead of a binary grammaticality judgement. Probabilistic models of language are a fundamental tool in speech recognition for resolving acoustically ambiguous utterances. For example, we prefer the transcription forbear to four bear as the former string is far more frequent in English text. Probabilistic mo...
<p>Abstract copyright data collection owner.</p>The files contain crowd sourced (Amazon Mechanical T...
Usually, language models are built either from a closed corpus, or by using World Wide Web retrieved...
This paper shows how to define probability distributions over linguistically realistic syntactic str...
Building models of language is a central task in natural language processing. Traditionally, languag...
Grammar-based natural language processing has reached a level where it can `understand' language to ...
This thesis contributes to the research domain of statistical language modeling. In this domain, the...
The use of language is one of the defining features of human cognition. Focusing here on two key fea...
Building probabilistic models of language is a central task in natural language and speech processin...
We describe a framework for inducing probabilistic grammars from corpora of positive samples. First,...
Language models are an important component of speech recognition. They aim to predict the probabilit...
This paper describes a fully implemented, broad coverage model of human syntactic processing. The mo...
The purpose of this paper is to define the framework within which empirical investigations of probab...
We address the problem of predicting a word from previous words in a sample of text. In particular, ...
We evaluated probabilistic lexicalized tree-insertion grammars (PLTIGs) on a classification task rel...
We evaluated probabilistic lexicalized tree-insertion grammars (PLTIGs) on a classification task rel...
<p>Abstract copyright data collection owner.</p>The files contain crowd sourced (Amazon Mechanical T...
Usually, language models are built either from a closed corpus, or by using World Wide Web retrieved...
This paper shows how to define probability distributions over linguistically realistic syntactic str...
Building models of language is a central task in natural language processing. Traditionally, languag...
Grammar-based natural language processing has reached a level where it can `understand' language to ...
This thesis contributes to the research domain of statistical language modeling. In this domain, the...
The use of language is one of the defining features of human cognition. Focusing here on two key fea...
Building probabilistic models of language is a central task in natural language and speech processin...
We describe a framework for inducing probabilistic grammars from corpora of positive samples. First,...
Language models are an important component of speech recognition. They aim to predict the probabilit...
This paper describes a fully implemented, broad coverage model of human syntactic processing. The mo...
The purpose of this paper is to define the framework within which empirical investigations of probab...
We address the problem of predicting a word from previous words in a sample of text. In particular, ...
We evaluated probabilistic lexicalized tree-insertion grammars (PLTIGs) on a classification task rel...
We evaluated probabilistic lexicalized tree-insertion grammars (PLTIGs) on a classification task rel...
<p>Abstract copyright data collection owner.</p>The files contain crowd sourced (Amazon Mechanical T...
Usually, language models are built either from a closed corpus, or by using World Wide Web retrieved...
This paper shows how to define probability distributions over linguistically realistic syntactic str...