Given the ranked lists of documents returned by multiple search engines in response to a given query, the problem of metasearch is to combine these lists in a way which optimizes the performance of the combination. This problem can be naturally decomposed into three subproblems: (1) normalizing the relevance scores given by the input systems, (2) estimating relevance scores for unretrieved documents, and (3) combining the newly-acquired scores for each document into one, improved score. Research on the problem of metasearch has historically concentrated on algorithms for combining (normalized) scores. In this paper, we show that the techniques used for normalizing relevance scores and estimating the relevance scores of unretrieved documents...
This thesis presents a unified method for simultaneous solution of three prob-lems in Information Re...
When searching the web, a user strives to find useful documents. Web search engines have been shown...
Ranked retrieval has a particular disadvantage in comparison with traditional Boolean retrieval: the...
Meta-search, or the combination of the outputs of different search engines in response to a query, h...
Given a set of rankings, the task of ranking fusion is the problem of combining these lists in such ...
Abstract. We adapt the cluster hypothesis for score-based information retrieval by claiming that clo...
Rank aggregation mechanisms have been used in solving problems from various domains such as bioinfor...
Metasearch engines are a significant part of the information retrieval process. Most of Web users us...
In this paper the score distributions of a number of text search engines are modeled. It is shown em...
Metasearch engines are a significant part of the information retrieval process. Most of Web users us...
Different information retrieval (IR) systems often return very diverse results lists for the same qu...
We propose a simple method for converting many stan-dard measures of retrieval performance into meta...
For a specific query merging the returned results from multiple search engines, in the for...
For a specific query merging the returned results from multiple search engines, in the for...
For a specific query merging the returned results from multiple search engines, in the for...
This thesis presents a unified method for simultaneous solution of three prob-lems in Information Re...
When searching the web, a user strives to find useful documents. Web search engines have been shown...
Ranked retrieval has a particular disadvantage in comparison with traditional Boolean retrieval: the...
Meta-search, or the combination of the outputs of different search engines in response to a query, h...
Given a set of rankings, the task of ranking fusion is the problem of combining these lists in such ...
Abstract. We adapt the cluster hypothesis for score-based information retrieval by claiming that clo...
Rank aggregation mechanisms have been used in solving problems from various domains such as bioinfor...
Metasearch engines are a significant part of the information retrieval process. Most of Web users us...
In this paper the score distributions of a number of text search engines are modeled. It is shown em...
Metasearch engines are a significant part of the information retrieval process. Most of Web users us...
Different information retrieval (IR) systems often return very diverse results lists for the same qu...
We propose a simple method for converting many stan-dard measures of retrieval performance into meta...
For a specific query merging the returned results from multiple search engines, in the for...
For a specific query merging the returned results from multiple search engines, in the for...
For a specific query merging the returned results from multiple search engines, in the for...
This thesis presents a unified method for simultaneous solution of three prob-lems in Information Re...
When searching the web, a user strives to find useful documents. Web search engines have been shown...
Ranked retrieval has a particular disadvantage in comparison with traditional Boolean retrieval: the...