Conventional n-gram language models are well-established as powerful yet simple mechanisms for characterising language structure when low data complexity is the primary objective. Much of their predictive power can be traced to a relatively small number of common word sequences usually comprised of grammatical terms, and a large number of infrequent word patterns comprised of thematic terms with high mutual information. The drawback for conventional approaches is an exceedingly large number of other n-grams which waste probability mass without making a reciprocal contribution in the formulation of accurate probability estimates. This thesis describes a simple modification to the n-gram approach which attempts to preserve and enhance the...
We address the problem of predicting a word from previous words in a sample of text. In particular, ...
Statistical language models are widely used in automatic speech recognition in order to constrain th...
Statistical n-gram language modeling is used in many domains like speech recognition, language ident...
International audienceThis paper describes an extension of the n-gram language model: the similar n-...
Verwimp L., Pelemans J., Van hamme H., Wambacq P., ''Extending n-gram language models based on equiv...
In language modeling, n-gram models are probabilistic models of text that use some limited amount of...
A new language model is presented which incorporates local N-gram dependencies with two important so...
It seems obvious that a successful model of natural language would incorporate a great deal of both ...
In this paper, an extension of n-grams is proposed. In this extension, the memory of the model (n) i...
Abstract. N-gram language modeling is essential in natural language processing and speech processing...
© 2015 Lyan Verwimp, Joris Pelemans, Hugo Van hamme, Patrick Wambacq. The subject of this paper is t...
© 2014 Pelemans et al.. In this paper we examine several combinations of classical N-gram language m...
Language models are an important component of speech recognition. They aim to predict the probabilit...
In recent years neural language models (LMs) have set state-of-the-art performance for several bench...
In this article, scientific evidence and opinions were given about what we mean by the N-gram model ...
We address the problem of predicting a word from previous words in a sample of text. In particular, ...
Statistical language models are widely used in automatic speech recognition in order to constrain th...
Statistical n-gram language modeling is used in many domains like speech recognition, language ident...
International audienceThis paper describes an extension of the n-gram language model: the similar n-...
Verwimp L., Pelemans J., Van hamme H., Wambacq P., ''Extending n-gram language models based on equiv...
In language modeling, n-gram models are probabilistic models of text that use some limited amount of...
A new language model is presented which incorporates local N-gram dependencies with two important so...
It seems obvious that a successful model of natural language would incorporate a great deal of both ...
In this paper, an extension of n-grams is proposed. In this extension, the memory of the model (n) i...
Abstract. N-gram language modeling is essential in natural language processing and speech processing...
© 2015 Lyan Verwimp, Joris Pelemans, Hugo Van hamme, Patrick Wambacq. The subject of this paper is t...
© 2014 Pelemans et al.. In this paper we examine several combinations of classical N-gram language m...
Language models are an important component of speech recognition. They aim to predict the probabilit...
In recent years neural language models (LMs) have set state-of-the-art performance for several bench...
In this article, scientific evidence and opinions were given about what we mean by the N-gram model ...
We address the problem of predicting a word from previous words in a sample of text. In particular, ...
Statistical language models are widely used in automatic speech recognition in order to constrain th...
Statistical n-gram language modeling is used in many domains like speech recognition, language ident...