Relevance feedback for document retrieval systems is a technique where user feedback is used to improve a query response. In this work we propose a system that uses multiple clusterings and a semi-supervised heuristic to improve a query response. The heuristic creates an optimal cluster w.r.t. the relevance feedback based on multiple clusterings. We justify the explicit separation of the optimization process and the clustering process by time and space constrains. The evaluation of the heuristic on a corpus containing 1.660 documents from MEDLINE showed promising results. We were able to obtain better results as a single clustering after a few iterations
High findability of documents within a certain cut-off rank is considered an important factor in rec...
Relevance feedback is the retrieval task where the system is given not only an information need, but...
International audienceDocument clustering techniques have been widely applied in Information Retriev...
Clustering and feedback have been used in information retrieval to improve the effectiveness of retr...
This paper discusses the issues involved in the design of a complete information retrieval system ba...
Automatic relevance feedback, or query expansion, is a common technique in information retrieval sys...
Typical pseudo-relevance feedback methods assume the topretrieved documents are relevant and use the...
Cluster-based pseudo-relevance feedback (PRF) is an effective approach for searching relevant docume...
Effective solutions for Web search engines can take advantage of algorithms for the automatic organi...
Effective solutions for Web search engines can take ad-vantage of algorithms for the automatic organ...
International audienceThis paper presents a cluster-based relevance feedback method, which combines ...
In document retrieval using pseudo relevance feedback, after initial ranking, a fixed number of top-...
This work addresses the problem of reducing the time between query submission and results output in ...
Relevance Feedback is a technique that helps an Information Retrieval system modify a query in respo...
Information retrieval is, in general, an iterative search process, in which the user often has sever...
High findability of documents within a certain cut-off rank is considered an important factor in rec...
Relevance feedback is the retrieval task where the system is given not only an information need, but...
International audienceDocument clustering techniques have been widely applied in Information Retriev...
Clustering and feedback have been used in information retrieval to improve the effectiveness of retr...
This paper discusses the issues involved in the design of a complete information retrieval system ba...
Automatic relevance feedback, or query expansion, is a common technique in information retrieval sys...
Typical pseudo-relevance feedback methods assume the topretrieved documents are relevant and use the...
Cluster-based pseudo-relevance feedback (PRF) is an effective approach for searching relevant docume...
Effective solutions for Web search engines can take advantage of algorithms for the automatic organi...
Effective solutions for Web search engines can take ad-vantage of algorithms for the automatic organ...
International audienceThis paper presents a cluster-based relevance feedback method, which combines ...
In document retrieval using pseudo relevance feedback, after initial ranking, a fixed number of top-...
This work addresses the problem of reducing the time between query submission and results output in ...
Relevance Feedback is a technique that helps an Information Retrieval system modify a query in respo...
Information retrieval is, in general, an iterative search process, in which the user often has sever...
High findability of documents within a certain cut-off rank is considered an important factor in rec...
Relevance feedback is the retrieval task where the system is given not only an information need, but...
International audienceDocument clustering techniques have been widely applied in Information Retriev...