4.4 Article

MULTILEVEL MODELS WITH STOCHASTIC VOLATILITY FOR REPEATED CROSS-SECTIONS: AN APPLICATION TO TRIBAL ART PRICES

Journal

ANNALS OF APPLIED STATISTICS
Volume 11, Issue 2, Pages 1040-1062

Publisher

INST MATHEMATICAL STATISTICS-IMS
DOI: 10.1214/17-AOAS1035

Keywords

Multilevel model; hedonic regression model; dependent random effects; stochastic volatility; autoregression

Funding

  1. Italian Government (FIRB project Mixture and latent variable models for causal inference and analysis of socio-economic data) [RBFR12SHVV]

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In this paper, we introduce a multilevel specification with stochastic volatility for repeated cross-sectional data. Modelling the time dynamics in repeated cross sections requires a suitable adaptation of the multilevel framework where the individuals/items are modelled at the first level whereas the time component appears at the second level. We perform maximum likelihood estimation by means of a nonlinear state space approach combined with Gauss-Legendre quadrature methods to approximate the likelihood function. We apply the model to the first database of tribal art items sold in the most important auction houses worldwide. The model allows to account properly for the heteroscedastic and autocorrelated volatility observed and has superior forecasting performance. Also, it provides valuable information on market trends and on predictability of prices that can be used by art markets stakeholders.

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