Abstract BayesMallows is an R package for analyzing preference data in the form of rankings with the Mallows rank model, and its finite mixture extension, in a Bayesian framework. The model is grounded on the idea that the probability density of an observed ranking decreases exponentially with the distance to the location parameter. It is the first Bayesian implementation that allows wide choices of distances, and it works well with a large amount of items to be ranked. BayesMallows handles non-standard data: partial rankings and pairwise comparisons, even in cases including non-transitive preference patterns. The Bayesian paradigm allows coherent quantification of posterior uncertainties of estimates of any quantity of interest. These post...
The BayesLCA package for R provides tools for performing latent class analysis within a Bayesian set...
Fit finite mixtures of Plackett-Luce models for partial top rankings/orderings within the Bayesian f...
In this paper we propose a Bayesian nonparametric model for clustering partial ranking data.We start...
Ranking and comparing items is crucial for collecting information about preferences in many areas, f...
Modeling and analysis of rank data have received renewed interest in the era of big data, when recru...
In this paper we present the R package PerMallows, which is a complete toolbox to work with permutat...
The exponential growth of social data both in volume and complexity has increasingly exposed many of...
Choice behavior and preferences typically involve numerous and subjective aspects that are difficul...
We develop a Bayesian nonparametric extension of the popular Plackett-Luce choice model that can han...
We propose the Pseudo-Mallows distribution over the set of all permutations of $n$ items, to approxi...
The Mallows model occupies a central role in parametric modelling of ranking data to learn preferenc...
This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation ...
BayesPostEst is an R package with convenience functions to generate and present quantities of intere...
textabstractThis paper presents the R package MitISEM (mixture of t by importance sampling weighted ...
A Bayesian approach for mode inference which works in two steps. First, a mixture distribution is fi...
The BayesLCA package for R provides tools for performing latent class analysis within a Bayesian set...
Fit finite mixtures of Plackett-Luce models for partial top rankings/orderings within the Bayesian f...
In this paper we propose a Bayesian nonparametric model for clustering partial ranking data.We start...
Ranking and comparing items is crucial for collecting information about preferences in many areas, f...
Modeling and analysis of rank data have received renewed interest in the era of big data, when recru...
In this paper we present the R package PerMallows, which is a complete toolbox to work with permutat...
The exponential growth of social data both in volume and complexity has increasingly exposed many of...
Choice behavior and preferences typically involve numerous and subjective aspects that are difficul...
We develop a Bayesian nonparametric extension of the popular Plackett-Luce choice model that can han...
We propose the Pseudo-Mallows distribution over the set of all permutations of $n$ items, to approxi...
The Mallows model occupies a central role in parametric modelling of ranking data to learn preferenc...
This paper presents the R package MitISEM (mixture of t by importance sampling weighted expectation ...
BayesPostEst is an R package with convenience functions to generate and present quantities of intere...
textabstractThis paper presents the R package MitISEM (mixture of t by importance sampling weighted ...
A Bayesian approach for mode inference which works in two steps. First, a mixture distribution is fi...
The BayesLCA package for R provides tools for performing latent class analysis within a Bayesian set...
Fit finite mixtures of Plackett-Luce models for partial top rankings/orderings within the Bayesian f...
In this paper we propose a Bayesian nonparametric model for clustering partial ranking data.We start...