Typically, ranking data consist of a set of individuals, or judges, who have ordered a set of items—or objects—according to their overall preference or some pre-specified criterion. When each judge has expressed his or her preferences according to his own best judgment, such data are characterized by systematic individual differences. In the literature, several approaches have been proposed to decompose heterogeneous populations of judges into a defined number of homogeneous groups. Often, these approaches work by assuming that the ranking process is governed by some distance-based probability models. We use the flexible class of methods proposed by Ben-Israel and Iyigun, which consists in a probabilistic distance clustering approach, and ...
Preference data represent a particular type of ranking data where a group of people gives their pref...
Some researchers have addressed the problem of aggregating individual preferences or rankings by see...
Preference rankings usually depend on the characteristics of both the individuals judging a set of o...
Typically, ranking data consist of a set of individuals, or judges, who have ordered a set of items—...
Typically, ranking data consist of a set of individuals, or judges, who have ordered a set of items...
Rankings and partial rankings are ubiquitous in data analysis, yet there is relatively little work o...
Rankings and partial rankings are ubiquitous in data analysis, yet there is relatively little work i...
We propose two robust fuzzy clustering techniques in the context of preference rankings to group jud...
This paper outlines a way for finding the consensus ranking minimizing the sum of the weighted Kemen...
In the framework of preference rankings, when the interest lies in explaining which predictors and w...
In the framework of preference rankings, the interest can lie in finding which predictors and which ...
The analysis of ranking data has recently received increasing attention in many fields (i.e. politic...
Preference data represent a particular type of ranking data where a group of people gives their pref...
Clustering of ranking data aims at the identification of groups of subjects with a homogenous, com-m...
Preference data represent a particular type of ranking data where a group of people gives their pref...
Some researchers have addressed the problem of aggregating individual preferences or rankings by see...
Preference rankings usually depend on the characteristics of both the individuals judging a set of o...
Typically, ranking data consist of a set of individuals, or judges, who have ordered a set of items—...
Typically, ranking data consist of a set of individuals, or judges, who have ordered a set of items...
Rankings and partial rankings are ubiquitous in data analysis, yet there is relatively little work o...
Rankings and partial rankings are ubiquitous in data analysis, yet there is relatively little work i...
We propose two robust fuzzy clustering techniques in the context of preference rankings to group jud...
This paper outlines a way for finding the consensus ranking minimizing the sum of the weighted Kemen...
In the framework of preference rankings, when the interest lies in explaining which predictors and w...
In the framework of preference rankings, the interest can lie in finding which predictors and which ...
The analysis of ranking data has recently received increasing attention in many fields (i.e. politic...
Preference data represent a particular type of ranking data where a group of people gives their pref...
Clustering of ranking data aims at the identification of groups of subjects with a homogenous, com-m...
Preference data represent a particular type of ranking data where a group of people gives their pref...
Some researchers have addressed the problem of aggregating individual preferences or rankings by see...
Preference rankings usually depend on the characteristics of both the individuals judging a set of o...