In this article, we study the rank aggregation problem, which aims to find a consensus ranking by aggregating multiple ranking lists. To address the problem probabilistically, we formulate an elaborate ranking model for full and partial rankings by generalizing the Mallows model. Our model assumes that the ranked data are generated through a multistage ranking process that is explicitly governed by parameters that measure the overall quality and stability of the process. The new model is quite flexible and has a closed form expression. Under mild conditions, we can derive a few useful theoretical properties of the model. Furthermore, we propose an efficient statistic called rank coefficient to detect over-correlated rankings and a hierarchi...
AbstractRank aggregation, originally an important issue in social choice theory, has become more and...
Rank aggregation, originally an important issue in social choice theory, has become more and more im...
In this article, we describe a new approach that combines the estimation of the lengths of highly co...
The analysis of ranking data has recently received increasing attention in many fields (i.e. politic...
International audienceThe problem of aggregating multiple rankings into one consensus ranking is an ...
Rank aggregation has recently been proposed as a useful abstraction that has several applications, i...
We propose a new model for rank aggregation from pairwise comparisons that captures both ranking het...
International audienceThe aggregation of multiple rankings into a consensus ranking is a crucial tas...
Rank aggregation is the problem of generating an overall ranking from a set of individual votes whic...
We propose the Heterogeneous Thurstone Model (HTM) for aggregating ranked data, which can take the a...
Rankings and scores are two common data types used by judges to express preferences and/or perceptio...
We study the problem of rank aggregation: given a set of ranked lists, we want to form a consensus r...
There has been much interest recently in the problem of rank aggregation from pairwise data. A natur...
The rank aggregation problem has been studied extensively in recent years with a focus on how to com...
Rank-aggregation or combining multiple ranked lists is the heart of meta-search engines in web infor...
AbstractRank aggregation, originally an important issue in social choice theory, has become more and...
Rank aggregation, originally an important issue in social choice theory, has become more and more im...
In this article, we describe a new approach that combines the estimation of the lengths of highly co...
The analysis of ranking data has recently received increasing attention in many fields (i.e. politic...
International audienceThe problem of aggregating multiple rankings into one consensus ranking is an ...
Rank aggregation has recently been proposed as a useful abstraction that has several applications, i...
We propose a new model for rank aggregation from pairwise comparisons that captures both ranking het...
International audienceThe aggregation of multiple rankings into a consensus ranking is a crucial tas...
Rank aggregation is the problem of generating an overall ranking from a set of individual votes whic...
We propose the Heterogeneous Thurstone Model (HTM) for aggregating ranked data, which can take the a...
Rankings and scores are two common data types used by judges to express preferences and/or perceptio...
We study the problem of rank aggregation: given a set of ranked lists, we want to form a consensus r...
There has been much interest recently in the problem of rank aggregation from pairwise data. A natur...
The rank aggregation problem has been studied extensively in recent years with a focus on how to com...
Rank-aggregation or combining multiple ranked lists is the heart of meta-search engines in web infor...
AbstractRank aggregation, originally an important issue in social choice theory, has become more and...
Rank aggregation, originally an important issue in social choice theory, has become more and more im...
In this article, we describe a new approach that combines the estimation of the lengths of highly co...