Modelling Time-Varying Rankings with Autoregressive and Score-Driven Dynamics

Author:

Holý Vladimír12,Zouhar Jan12

Affiliation:

1. Department of Econometrics, Faculty of Informatics and Statistics , Prague , Czechia

2. Prague University of Economics and Business , Prague , Czechia

Abstract

Abstract 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 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 that statistical inference relying on conventional Hessian-based standard errors is usable even for medium-sized samples. In an empirical study, we apply the model to the results of the Ice Hockey World Championships. We also discuss applications to rankings based on underlying indices, repeated surveys and non-parametric efficiency analysis.

Funder

Grantová Agentura České Republiky

Vysoká Škola Ekonomická v Praze

Publisher

Oxford University Press (OUP)

Subject

Statistics, Probability and Uncertainty,Statistics and Probability

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