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Two-stage weighted least squares estimator of the conditional mean of observation-driven time series models

  • Université des Sciences et de la Technologie Houari Boumediène
  • Qassim University
  • CREST
  • Université de Lille

Research output: Contribution to journalArticlepeer-review

Abstract

General parametric forms are assumed for the conditional mean λt0) and variance υt of a time series. These conditional moments can for instance be derived from count time series, Autoregressive Conditional Duration or Generalized Autoregressive Score models. In this paper, our aim is to estimate the conditional mean parameter θ0, trying to be as agnostic as possible about the conditional distribution of the observations. Quasi-Maximum Likelihood Estimators (QMLEs) based on the linear exponential family fulfill this goal, but they may be inefficient and have complicated asymptotic distributions when θ0 contains boundary coefficients. We thus study alternative Weighted Least Square Estimators (WLSEs), which enjoy the same consistency property as the QMLEs when the conditional distribution is misspecified, but have simpler asymptotic distributions when components of θ0 are null and gain in efficiency when υt is well specified. We compare the asymptotic properties of the QMLEs and WLSEs, and determine a data driven strategy for finding an asymptotically optimal WLSE. Simulation experiments and illustrations on realized volatility forecasting are presented.

Original languageEnglish
Article number105174
JournalJournal of Econometrics
Volume237
Issue number2
DOIs
Publication statusPublished - 1 Dec 2023
Externally publishedYes

Keywords

  • Autoregressive Conditional Duration model
  • Exponential
  • INteger-valued AR
  • INteger-valued GARCH
  • Negative Binomial QMLE
  • Poisson
  • Weighted LSE

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