Decision making is challenging when there is more than one criterion to consider. In such cases, it is common to assign a goodness score to each item as a weighted sum of its attribute values and rank them accordingly. Clearly, the ranking obtained depends on the weights used for this summation. Ideally, one would want the ranked order not to change if the weights are changed slightly. We call this property stability of the ranking. A consumer of a ranked list may trust the ranking more if it has high stability. A producer of a ranked list prefers to choose weights that result in a stable ranking, both to earn the trust of potential consumers and because a stable ranking is intrinsically likely to be more meaningful. In this paper, we devel...
The ranking aggregation problem is that to establishing a new aggregate ranking given a set of ran...
AbstractThe quality of ranking determines the success or failure of information retrieval and the go...
Rank aggregation has recently been proposed as a useful abstraction that has several applications, i...
This paper studies the learning problem of ranking when one wishes not just to accurately predict pa...
Feature selection is a key step when dealing with high-dimensional data. In particular, these techni...
Ranking queries report the top-K results according to a user-defined scoring function. A widely used...
We present a new characterization of the class of weight-based scoring indices for ranking problems ...
In this paper, we discuss how a proper definition of a ranking can be introduced in the framework of...
The goal in Learning to Rank (LETOR) is to learn to order a novel set of items, given training data ...
AbstractThe goal of top-k ranking for objects is to rank the objects so that the best k of them can ...
International audienceWe present a new web service which computes the stable sorting of some alterna...
Ranking objects in terms of different attributes is a crucial practice that is typically sensitive t...
Abstract. Rankings or ratings are popular methods for structuring large informa-tion sets in search ...
Rankings or ratings are popular methods for structuring large information sets in search engines, e-...
The ranking aggregation problem is that to establishing a new aggregate ranking given a set of ran...
AbstractThe quality of ranking determines the success or failure of information retrieval and the go...
Rank aggregation has recently been proposed as a useful abstraction that has several applications, i...
This paper studies the learning problem of ranking when one wishes not just to accurately predict pa...
Feature selection is a key step when dealing with high-dimensional data. In particular, these techni...
Ranking queries report the top-K results according to a user-defined scoring function. A widely used...
We present a new characterization of the class of weight-based scoring indices for ranking problems ...
In this paper, we discuss how a proper definition of a ranking can be introduced in the framework of...
The goal in Learning to Rank (LETOR) is to learn to order a novel set of items, given training data ...
AbstractThe goal of top-k ranking for objects is to rank the objects so that the best k of them can ...
International audienceWe present a new web service which computes the stable sorting of some alterna...
Ranking objects in terms of different attributes is a crucial practice that is typically sensitive t...
Abstract. Rankings or ratings are popular methods for structuring large informa-tion sets in search ...
Rankings or ratings are popular methods for structuring large information sets in search engines, e-...
The ranking aggregation problem is that to establishing a new aggregate ranking given a set of ran...
AbstractThe quality of ranking determines the success or failure of information retrieval and the go...
Rank aggregation has recently been proposed as a useful abstraction that has several applications, i...