Several practical applications require joining various rankings into a consensus ranking. These applications include gathering the results of multiple queries in information retrieval, deciding the result of a poll involving multiple judges and joining the outputs from ranking classification algorithms. Finding the ranking that best representes a set of rankings is a NP-hard problem, but a good solution can be found by using metaheuristics. In this paper, we investigate the use of Clustering Search (CS) algorithm allied to Simulated Annealing (SA) for solving the rank aggregation problem. CS will clusters the solutions found by SA in order to find promising regions in the search space, that can be further exploited by a local search. Experi...
Ranking is the central problem for information retrieval (IR), and employing machine learning techni...
In the context of Web Search, clustering based engines are emerging as an alternative for the classi...
This paper is to investigate rank aggregation based on multiple user-centered measures in the contex...
Several practical applications require joining various rankings into a consensus ranking. These appl...
This paper presents the Clustering Search (CS) as a new hybrid metaheuristic, which works in conjunc...
Currently, commercial search engines have implemented methods to suggest alternative Web queries to ...
Rank aggregation mechanisms have been used in solving problems from various domains such as bioinfor...
A top-k query combines different rankings of the same set of objects and returns the k objects with ...
Rank aggregation has recently been proposed as a useful abstraction that has several applications, i...
We consider the following problem: given a set of clusterings, find a single clustering that agrees ...
The rank aggregation problem can be encountered in many scientific areas (such as economics, social ...
Most web search results clustering (SRC) strategies have predominantly studied the definition of ada...
Rank-aggregation or combining multiple ranked lists is the heart of meta-search engines in web infor...
As the storage capacity and the processing speed of search engine is growing to keep up with the con...
The k-means clustering algorithm has a long history and a proven practical performance, however it d...
Ranking is the central problem for information retrieval (IR), and employing machine learning techni...
In the context of Web Search, clustering based engines are emerging as an alternative for the classi...
This paper is to investigate rank aggregation based on multiple user-centered measures in the contex...
Several practical applications require joining various rankings into a consensus ranking. These appl...
This paper presents the Clustering Search (CS) as a new hybrid metaheuristic, which works in conjunc...
Currently, commercial search engines have implemented methods to suggest alternative Web queries to ...
Rank aggregation mechanisms have been used in solving problems from various domains such as bioinfor...
A top-k query combines different rankings of the same set of objects and returns the k objects with ...
Rank aggregation has recently been proposed as a useful abstraction that has several applications, i...
We consider the following problem: given a set of clusterings, find a single clustering that agrees ...
The rank aggregation problem can be encountered in many scientific areas (such as economics, social ...
Most web search results clustering (SRC) strategies have predominantly studied the definition of ada...
Rank-aggregation or combining multiple ranked lists is the heart of meta-search engines in web infor...
As the storage capacity and the processing speed of search engine is growing to keep up with the con...
The k-means clustering algorithm has a long history and a proven practical performance, however it d...
Ranking is the central problem for information retrieval (IR), and employing machine learning techni...
In the context of Web Search, clustering based engines are emerging as an alternative for the classi...
This paper is to investigate rank aggregation based on multiple user-centered measures in the contex...