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Estimation and Testing in M‐quantile Regression with Applications to Small Area Estimation
Author(s) -
Bianchi Annamaria,
Fabrizi Enrico,
Salvati Nicola,
Tzavidis Nikos
Publication year - 2018
Publication title -
international statistical review
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.051
H-Index - 54
eISSN - 1751-5823
pISSN - 0306-7734
DOI - 10.1111/insr.12267
Subject(s) - quantile regression , quantile , outlier , mathematics , statistics , estimator , regression analysis , parametric statistics , model selection , econometrics , regression
Summary In recent years, M‐quantile regression has been applied to small area estimation to obtain reliable and outlier robust estimators without recourse to strong parametric assumptions. In this paper, after a review of M‐quantile regression and its application to small area estimation, we cover several topics related to model specification and selection for M‐quantile regression that received little attention so far. Specifically, a pseudo‐ R 2 goodness‐of‐fit measure is proposed, along with likelihood ratio and Wald type tests for model specification. A test to assess the presence of actual area heterogeneity in the data is also proposed. Finally, we introduce a new estimator of the scale of the regression residuals, motivated by a representation of the M‐quantile regression estimation as a regression model with Generalised Asymmetric Least Informative distributed error terms. The Generalised Asymmetric Least Informative distribution, introduced in this paper, generalises the asymmetric Laplace distribution often associated to quantile regression. As the testing procedures discussed in the paper are motivated asymptotically, their finite sample properties are empirically assessed in Monte Carlo simulations. Although the proposed methods apply generally to M‐quantile regression, in this paper, their use ar illustrated by means of an application to Small Area Estimation using a well known real dataset.