Meta-search, or the combination of the outputs of different search engines in response to a query, has been shown to improve performance. Since the scores produced by different search engines are not comparable, researchers have often decomposed the metasearch problem into a score normalization step followed by a combination step. Combination has been studied by many researchers. While appropriate normalization can affect performance, most of the normalization schemes suggested are ad hoc in nature. In this paper, we propose a formal approach to normalizing scores for meta-search by taking the distributions of the scores into account. Recently, it has been shown that for search engines the score distributions for a given query may be modele...
Abstract. We review the history of modeling score distributions, focusing on the mixture of normal-e...
Abstract. We adapt the cluster hypothesis for score-based information retrieval by claiming that clo...
Modelling the distribution of document scores returned from an information retrieval (IR) system in ...
In this paper the score distributions of a number of text search engines are modeled. It is shown em...
Given the ranked lists of documents returned by multiple search engines in response to a given query...
Score normalization is indispensable in distributed retrieval and fu-sion or meta-search where mergi...
Score normalization is indispensable in distributed retrieval and fusion or meta-search where mergin...
Ranked retrieval has a particular disadvantage in comparison with traditional Boolean retrieval: the...
Given a set of rankings, the task of ranking fusion is the problem of combining these lists in such ...
Score-distribution models are used for various practical pur-poses in search, for example for result...
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...
The final publication is available at Springer via http://dx.doi.org/10.1007/11735106_63Proceedings ...
Abstract. We review the history of modeling score distributions, focusing on the mixture of normal-e...
Abstract. We adapt the cluster hypothesis for score-based information retrieval by claiming that clo...
Modelling the distribution of document scores returned from an information retrieval (IR) system in ...
In this paper the score distributions of a number of text search engines are modeled. It is shown em...
Given the ranked lists of documents returned by multiple search engines in response to a given query...
Score normalization is indispensable in distributed retrieval and fu-sion or meta-search where mergi...
Score normalization is indispensable in distributed retrieval and fusion or meta-search where mergin...
Ranked retrieval has a particular disadvantage in comparison with traditional Boolean retrieval: the...
Given a set of rankings, the task of ranking fusion is the problem of combining these lists in such ...
Score-distribution models are used for various practical pur-poses in search, for example for result...
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...
The final publication is available at Springer via http://dx.doi.org/10.1007/11735106_63Proceedings ...
Abstract. We review the history of modeling score distributions, focusing on the mixture of normal-e...
Abstract. We adapt the cluster hypothesis for score-based information retrieval by claiming that clo...
Modelling the distribution of document scores returned from an information retrieval (IR) system in ...