We develop a new statistical model to analyse time-varying ranking data. The model can be used with a large number of ranked items, accommodates exogenous time-varying covariates and partial rankings, and is estimated via the maximum likelihood in a straightforward manner. Rankings are modelled using the Plackett-Luce distribution with time-varying worth parameters that follow a mean-reverting time series process. To capture the dependence of the worth parameters on past rankings, we utilise the conditional score in the fashion of the generalised autoregressive score (GAS) models. Simulation experiments show that the small-sample properties of the maximum-likelihood estimator improve rapidly with the length of the time series and suggest th...
This paper presents the R package GAS for the analysis of time series under the generalized autoregr...
We develop a Bayesian nonparametric extension of the popular Plackett-Luce choice model that can han...
This paper introduces an adaptive algorithm for time-varying autoregressive models in the presence ...
We propose a class of observation-driven time series models referred to as generalized autoregressiv...
We present new statistical methodology for analysing rank data, where the rankings are allowed to va...
In this paper we propose a new time-varying econometric model, called Time-Varying Poisson AutoRegre...
October 23, 2008We propose a new class of observation driven time series models that we refer to as ...
We propose a new class of score-driven time series models that allows for a more flexible weighting ...
The current study investigates the behaviour of time-varying parameters that are based on the score ...
We present a statistical methodology for fitting time varying rankings, by estimating the strength p...
This paper presents the R package PlackettLuce, which implements a generalization of the Plackett-Lu...
In the course of national sports tournaments, usually lasting several months, it is expected that t...
In 1985 while at Morgan Stanley, Nunzio Tartaglia and a small group of mathematicians, physicists, a...
This paper introduces and evaluates new models for time series count data. The Autoregressive Condit...
The problem of maximum likelihood estimation of time-varying parameters is considered. A hierarchica...
This paper presents the R package GAS for the analysis of time series under the generalized autoregr...
We develop a Bayesian nonparametric extension of the popular Plackett-Luce choice model that can han...
This paper introduces an adaptive algorithm for time-varying autoregressive models in the presence ...
We propose a class of observation-driven time series models referred to as generalized autoregressiv...
We present new statistical methodology for analysing rank data, where the rankings are allowed to va...
In this paper we propose a new time-varying econometric model, called Time-Varying Poisson AutoRegre...
October 23, 2008We propose a new class of observation driven time series models that we refer to as ...
We propose a new class of score-driven time series models that allows for a more flexible weighting ...
The current study investigates the behaviour of time-varying parameters that are based on the score ...
We present a statistical methodology for fitting time varying rankings, by estimating the strength p...
This paper presents the R package PlackettLuce, which implements a generalization of the Plackett-Lu...
In the course of national sports tournaments, usually lasting several months, it is expected that t...
In 1985 while at Morgan Stanley, Nunzio Tartaglia and a small group of mathematicians, physicists, a...
This paper introduces and evaluates new models for time series count data. The Autoregressive Condit...
The problem of maximum likelihood estimation of time-varying parameters is considered. A hierarchica...
This paper presents the R package GAS for the analysis of time series under the generalized autoregr...
We develop a Bayesian nonparametric extension of the popular Plackett-Luce choice model that can han...
This paper introduces an adaptive algorithm for time-varying autoregressive models in the presence ...