This thesis proposes selective Web information retrieval, a framework formulated in terms of statistical decision theory, with the aim to apply an appropriate retrieval approach on a per-query basis. The main component of the framework is a decision mechanism that selects an appropriate retrieval approach on a per-query basis. The selection of a particular retrieval approach is based on the outcome of an experiment, which is performed before the final ranking of the retrieved documents. The experiment is a process that extracts features from a sample of the set of retrieved documents. This thesis investigates three broad types of experiments. The first one counts the occurrences of query terms in the retrieved documents, indicating the...
Abstract This paper examines a new approach to Web information retrieval, and proposes a new two sta...
Relevance Feedback is a technique that helps an Information Retrieval system modify a query in respo...
I present a new information retrieval framework based on set-based preference learning that provides...
This thesis proposes selective Web information retrieval, a framework formulated in terms of statist...
This thesis proposes selective Web information retrieval, a framework formulated in terms of statist...
In information retrieval systems, search parameters are optimized to ensure high effectiveness based...
In information retrieval systems, search parameters are optimized to ensure high effectiveness based...
In information retrieval systems, search parameters are optimized to ensure high effectiveness based...
In this paper we promote a selective information retrieval process to be applied in the context of r...
The effective ranking of documents in search engines is based on various document features, such as ...
We consider the problem of optimally allocating a limited budget to acquire relevance judgments when...
We consider the problem of optimally allocating a limited budget to acquire relevance judgments when...
The effective ranking of documents in search engines is based on various document features, such as ...
We consider the problem of optimally allocating a limited budget to acquire relevance judgments when...
International audienceIn this paper we promote a selective information retrieval process to be appli...
Abstract This paper examines a new approach to Web information retrieval, and proposes a new two sta...
Relevance Feedback is a technique that helps an Information Retrieval system modify a query in respo...
I present a new information retrieval framework based on set-based preference learning that provides...
This thesis proposes selective Web information retrieval, a framework formulated in terms of statist...
This thesis proposes selective Web information retrieval, a framework formulated in terms of statist...
In information retrieval systems, search parameters are optimized to ensure high effectiveness based...
In information retrieval systems, search parameters are optimized to ensure high effectiveness based...
In information retrieval systems, search parameters are optimized to ensure high effectiveness based...
In this paper we promote a selective information retrieval process to be applied in the context of r...
The effective ranking of documents in search engines is based on various document features, such as ...
We consider the problem of optimally allocating a limited budget to acquire relevance judgments when...
We consider the problem of optimally allocating a limited budget to acquire relevance judgments when...
The effective ranking of documents in search engines is based on various document features, such as ...
We consider the problem of optimally allocating a limited budget to acquire relevance judgments when...
International audienceIn this paper we promote a selective information retrieval process to be appli...
Abstract This paper examines a new approach to Web information retrieval, and proposes a new two sta...
Relevance Feedback is a technique that helps an Information Retrieval system modify a query in respo...
I present a new information retrieval framework based on set-based preference learning that provides...