We propose a new family of distance measures on rankings, derived through an axiomatic approach, that consider the nonuniform relevance of the top and bottom of ordered lists and similarities between candidates. The proposed distance functions include specialized weighted versions of the Kendall τ distance and the Cayley distance, and are suitable for comparing rankings in a number of applications, including information retrieval and rank aggregation. In addition to proposing the distance measures and providing the theoretical underpinnings for their applications, we also analyze algorithmic and computational aspects of weighted distance-based rank aggregation. We present an aggregation method based on approximating weighted distance measur...
Preference data represent a particular type of ranking data where a group of people gives their pref...
Defining the appropriate ranking distance measures among rankings is a classic area of study. The go...
Rank aggregation has recently been proposed as a useful abstraction that has several applications, i...
We propose a new family of distance measures on rankings, derived through an axiomatic approach, tha...
AbstractThis paper presents some computational properties of the rank-distance, a measure of similar...
From social choice to statistics to coding theory, rankings are found to be a useful vehicle for sto...
Ranking data has applications in different fields of studies, like marketing, psychology and politic...
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...
Abstract We address the problem of computing distances between rankings that take into account simil...
rankdist is a recently developed R package which implements various distance-based ranking models. T...
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 (widely used in sports, web search, soc...
Clustering of ranking data aims at the identification of groups of subjects with a homogenous, commo...
Some researchers have addressed the problem of aggregating individual preferences or rankings by see...
Preference data represent a particular type of ranking data where a group of people gives their pref...
Defining the appropriate ranking distance measures among rankings is a classic area of study. The go...
Rank aggregation has recently been proposed as a useful abstraction that has several applications, i...
We propose a new family of distance measures on rankings, derived through an axiomatic approach, tha...
AbstractThis paper presents some computational properties of the rank-distance, a measure of similar...
From social choice to statistics to coding theory, rankings are found to be a useful vehicle for sto...
Ranking data has applications in different fields of studies, like marketing, psychology and politic...
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...
Abstract We address the problem of computing distances between rankings that take into account simil...
rankdist is a recently developed R package which implements various distance-based ranking models. T...
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 (widely used in sports, web search, soc...
Clustering of ranking data aims at the identification of groups of subjects with a homogenous, commo...
Some researchers have addressed the problem of aggregating individual preferences or rankings by see...
Preference data represent a particular type of ranking data where a group of people gives their pref...
Defining the appropriate ranking distance measures among rankings is a classic area of study. The go...
Rank aggregation has recently been proposed as a useful abstraction that has several applications, i...