International audienceA new statistical method for Language Modeling and spoken document classification is proposed. It is based on a mixture of topic dependent probabilities. Each topic dependent probability is in turn a mixture of n-gram probabilities and the probability of Kullback-Lieber (KL) distances between keyword unigrams and distribution obtained from the content of a cache memory. Experimental result on topic classification using a corpus of 60 Mword from the French newspaper Le Monde show the excellent performance of the cache memory and its complementary role in providing different statistics for the decision process
International audienceThis paper describes the application of an information-theoretic approach to d...
In state-of-the-art large vocabulary automatic recognition systems, a large statistical language mod...
This paper describes an approach for constructing a mixture of language models based on simple stati...
International audienceA new statistical method for Language Modeling and spoken document classificat...
National audienceA new statistical method for Language Modeling and spoken document classification i...
National audienceA new statistical method for Language Modeling and spoken document classification i...
This paper describes an approach for constructing a mixture of language models based on simple stati...
Probabilistic topic models are unsupervised generative models which model document content as a two-...
International audienceThe use of cache memories and symmetric Kullback-Leibler distances is proposed...
International audienceThe use of cache memories and symmetric Kullback-Leibler distances is proposed...
Topic adaptation for language modeling is concerned with adjusting the probabilities in a language m...
Colloque avec actes et comité de lecture. internationale.International audienceThis paper presents s...
Topic adaptation for language modeling is concerned with ad-justing the probabilities in a language ...
Language model is an essential part in sta-tistical machine translation, but traditional n-gram lang...
Topic modeling is an unsupervised learning task that discovers the hidden topics in a ...
International audienceThis paper describes the application of an information-theoretic approach to d...
In state-of-the-art large vocabulary automatic recognition systems, a large statistical language mod...
This paper describes an approach for constructing a mixture of language models based on simple stati...
International audienceA new statistical method for Language Modeling and spoken document classificat...
National audienceA new statistical method for Language Modeling and spoken document classification i...
National audienceA new statistical method for Language Modeling and spoken document classification i...
This paper describes an approach for constructing a mixture of language models based on simple stati...
Probabilistic topic models are unsupervised generative models which model document content as a two-...
International audienceThe use of cache memories and symmetric Kullback-Leibler distances is proposed...
International audienceThe use of cache memories and symmetric Kullback-Leibler distances is proposed...
Topic adaptation for language modeling is concerned with adjusting the probabilities in a language m...
Colloque avec actes et comité de lecture. internationale.International audienceThis paper presents s...
Topic adaptation for language modeling is concerned with ad-justing the probabilities in a language ...
Language model is an essential part in sta-tistical machine translation, but traditional n-gram lang...
Topic modeling is an unsupervised learning task that discovers the hidden topics in a ...
International audienceThis paper describes the application of an information-theoretic approach to d...
In state-of-the-art large vocabulary automatic recognition systems, a large statistical language mod...
This paper describes an approach for constructing a mixture of language models based on simple stati...