The main obstacle for providing focused search is the relative opaqueness of search request—searchers tend to express their complex information needs in only a couple of keywords. Our overall aim is to find out if, and how, topic-based language models can leads to more effective web information retrieval. In this paper we explore retrieval performance of a topic-based model that combines topical models with other language models based on cross-entropy. We first define our topical categories and train our topical models on the .GOV2 corpus by building parsimonious language models. We then test the topic-based model on TREC8 small Web data collection for ad-hoc search. Our experimental results show that the topic-based model outperforms the s...
Because of the world wide web, information retrieval systems are now used by millions of untrained u...
This thesis targets on a challenging issue that is to enhance users' experience over massive and ove...
In this paper, we study different applications of cross-language latent topic models trained on comp...
The main obstacle for providing focused search is the relative opaqueness of search request -- searc...
The main obstacle for providing focused search is the relative opaqueness of search request -- searc...
In this paper we explore the use of parsimonious language models for web retrieval. These models are...
In this paper we explore the use of parsimonious language models for web retrieval. These models are...
We propose a topic based approach lo language modelling for ad-hoc Information Retrieval (IR). Many...
We propose a topic based approach to language modelling for ad-hoc Information Retrieval (IR). Many ...
We systematically investigate a new approach to estimating the parameters of language models for inf...
We propose a topic based approach lo language modelling for ad-hoc Information Retrieval (IR). Many...
Topic modeling demonstrates the semantic relations among words, which should be helpful for informat...
We propose a topic based approach to language modelling for ad-hoc Information Retrieval (IR). Many ...
We explore the potential of probabilistic topic modeling within the relevance modeling framework for...
Topic models have the potential to improve search and browsing by extracting useful semantic themes ...
Because of the world wide web, information retrieval systems are now used by millions of untrained u...
This thesis targets on a challenging issue that is to enhance users' experience over massive and ove...
In this paper, we study different applications of cross-language latent topic models trained on comp...
The main obstacle for providing focused search is the relative opaqueness of search request -- searc...
The main obstacle for providing focused search is the relative opaqueness of search request -- searc...
In this paper we explore the use of parsimonious language models for web retrieval. These models are...
In this paper we explore the use of parsimonious language models for web retrieval. These models are...
We propose a topic based approach lo language modelling for ad-hoc Information Retrieval (IR). Many...
We propose a topic based approach to language modelling for ad-hoc Information Retrieval (IR). Many ...
We systematically investigate a new approach to estimating the parameters of language models for inf...
We propose a topic based approach lo language modelling for ad-hoc Information Retrieval (IR). Many...
Topic modeling demonstrates the semantic relations among words, which should be helpful for informat...
We propose a topic based approach to language modelling for ad-hoc Information Retrieval (IR). Many ...
We explore the potential of probabilistic topic modeling within the relevance modeling framework for...
Topic models have the potential to improve search and browsing by extracting useful semantic themes ...
Because of the world wide web, information retrieval systems are now used by millions of untrained u...
This thesis targets on a challenging issue that is to enhance users' experience over massive and ove...
In this paper, we study different applications of cross-language latent topic models trained on comp...