Although the seminal proposal to introduce language modeling in information retrieval was based on a multivariate Bernoulli model, the predominant modeling approach is now centered on multinomial models. Language modeling for retrieval based on multivariate Bernoulli distributions is seen inefficient and believed less effective than the multinomial model. In this article, we examine the multivariate Bernoulli model with respect to its successor and examine its role in future retrieval systems. In the context of Bayesian learning, these two modeling approaches are described, contrasted, and compared both theoretically and computationally. We show that the query likelihood following a multivariate Bernoulli distribution introduces interesting...
Contains fulltext : 73393.pdf (publisher's version ) (Open Access)Language models ...
The Multiple Bernoulli (MB) Language Model has been generally considered too computationally expensi...
The Multiple Bernoulli (MB) Language Model has been generally considered too computationally expensi...
Although the seminal proposal to introduce language modeling in information retrieval was based on a...
based on a multi-variate Bernoulli model, the predominant modeling approach is now centered on Multi...
Recent approaches to text classification have used two different first-order probabilistic models fo...
Because of the world wide web, information retrieval systems are now used by millions of untrained u...
Recent work in text classification has used two different first-order probabilistic models for class...
Current state of the art information retrieval models treat documents and queries as bags of words. ...
This paper presents a new probabilistic model of information retrieval. The most important modeling ...
Abstract. This paper presents a new probabilistic model of information retrieval. The most important...
Retrieval models are the core components of information retrieval systems, which guide the document ...
Naive Bayes has been widely used in the field of machine learning research for many years. While it ...
Building on previous work in the field of language modeling information retrieval (IR), this paper p...
We present a probabilistic model for the retrieval of multimodal documents. The model is based on Ba...
Contains fulltext : 73393.pdf (publisher's version ) (Open Access)Language models ...
The Multiple Bernoulli (MB) Language Model has been generally considered too computationally expensi...
The Multiple Bernoulli (MB) Language Model has been generally considered too computationally expensi...
Although the seminal proposal to introduce language modeling in information retrieval was based on a...
based on a multi-variate Bernoulli model, the predominant modeling approach is now centered on Multi...
Recent approaches to text classification have used two different first-order probabilistic models fo...
Because of the world wide web, information retrieval systems are now used by millions of untrained u...
Recent work in text classification has used two different first-order probabilistic models for class...
Current state of the art information retrieval models treat documents and queries as bags of words. ...
This paper presents a new probabilistic model of information retrieval. The most important modeling ...
Abstract. This paper presents a new probabilistic model of information retrieval. The most important...
Retrieval models are the core components of information retrieval systems, which guide the document ...
Naive Bayes has been widely used in the field of machine learning research for many years. While it ...
Building on previous work in the field of language modeling information retrieval (IR), this paper p...
We present a probabilistic model for the retrieval of multimodal documents. The model is based on Ba...
Contains fulltext : 73393.pdf (publisher's version ) (Open Access)Language models ...
The Multiple Bernoulli (MB) Language Model has been generally considered too computationally expensi...
The Multiple Bernoulli (MB) Language Model has been generally considered too computationally expensi...