Previous research on cluster-based retrieval has been inconclusive as to whether it does bring improved retrieval effectiveness over document-based retrieval. Recent developments in the language modeling approach to IR have motivated us to re-examine this problem within this new retrieval framework. We propose two new models for cluster-based retrieval and evaluate them on several TREC collections. We show that cluster-based retrieval can perform consistently across collections of realistic size, and significant improvements over document-based retrieval can be obtained in a fully automatic manner and without relevance information provided by human
A new means of evaluating the cluster hypothesis is introduced and the results of such an evaluatio...
Fusion and clustering are two approaches to improving the effectiveness of information retrieval. In...
The huge volume of text documents available on the internet has made it difficult to find valuable i...
The standard approach to document retrieval is to assume that the relevance of documents could be as...
Cluster-based information retrieval, an extension of information retrieval strategy, is based on the...
In information retrieval, the word mismatch problem is a critical issue. To resolve the problem, sev...
The term mismatch problem in information retrieval is a critical problem, and several techniques hav...
Information retrieval using meta data can be traced back to the early age of IR where documents are ...
A classical information retrieval system ranks documents according to distances between texts and a...
In this paper, we explored how to use meta-data information in information retrieval task. We presen...
Cluster retrieval assumes that the probability of relevance of a document should depend on the relev...
Nowadays, one of the demands for computer system is capability to process textmd natural language au...
Information Retrieval Most previous work on the recently developed languagemodeling approach to info...
This paper discusses the issues involved in the design of a complete information retrieval system ba...
Fusion and clustering are two approaches to improving the effectiveness of information retrieval. In...
A new means of evaluating the cluster hypothesis is introduced and the results of such an evaluatio...
Fusion and clustering are two approaches to improving the effectiveness of information retrieval. In...
The huge volume of text documents available on the internet has made it difficult to find valuable i...
The standard approach to document retrieval is to assume that the relevance of documents could be as...
Cluster-based information retrieval, an extension of information retrieval strategy, is based on the...
In information retrieval, the word mismatch problem is a critical issue. To resolve the problem, sev...
The term mismatch problem in information retrieval is a critical problem, and several techniques hav...
Information retrieval using meta data can be traced back to the early age of IR where documents are ...
A classical information retrieval system ranks documents according to distances between texts and a...
In this paper, we explored how to use meta-data information in information retrieval task. We presen...
Cluster retrieval assumes that the probability of relevance of a document should depend on the relev...
Nowadays, one of the demands for computer system is capability to process textmd natural language au...
Information Retrieval Most previous work on the recently developed languagemodeling approach to info...
This paper discusses the issues involved in the design of a complete information retrieval system ba...
Fusion and clustering are two approaches to improving the effectiveness of information retrieval. In...
A new means of evaluating the cluster hypothesis is introduced and the results of such an evaluatio...
Fusion and clustering are two approaches to improving the effectiveness of information retrieval. In...
The huge volume of text documents available on the internet has made it difficult to find valuable i...