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Published September 2005 | public
Journal Article

Quasi-maximum likelihood estimation for conditional quantiles

Abstract

In this paper, we construct a new class of estimators for conditional quantiles in possibly misspecified nonlinear models withtime series data. Proposed estimators belong to the family of quasi-maximum likelihood estimators (QMLEs) and are based on a new family of densities which we call 'tick-exponential'. A well-known member of the tick-exponential family is the asymmetric Laplace density, and the corresponding QMLE reduces to the Koenker and Bassett's (Econometrica 46 (1978) 33) nonlinear quantile regression estimator. We derive primitive conditions under which the tick-exponential QMLEs are consistent and asymptotically normally distributed withan asymptotic covariance matrix that accounts for possible conditional quantile model misspecification and which can be consistently estimated by using the tick-exponential scores and Hessian matrix. Despite its non-differentiability, the tickexponential quasi-likelihood is easy to maximize by using a 'minimax' representation not seen in the earlier work on conditional quantile estimation.

Additional Information

© 2004 Elsevier B.V. All rights reserved. Received 29 June 2004. Formerly SSWP 1139.

Additional details

Created:
August 22, 2023
Modified:
October 17, 2023