Citation:
Escanciano, J. C., Pardo-Fernández, J. C., & Van Keilegom, I. (2018). Asymptotic distribution-free tests for semiparametric regressions with dependent data.The Annals of Statistics, 46 (3), pp. 1167 - 1196
xmlui.dri2xhtml.METS-1.0.item-contributor-funder:
Ministerio de Economía y Competitividad (España) European Commission
Sponsor:
Supported by the Spanish Plan Nacional de I+D+I, reference number ECO2014-55858-P.
Supported by the SpanishMinisterio de Economía y Competitividad (GrantMTM2014-55966 P).
Supported by the European Research Council (2016-2021, Horizon 2020 ERC Grant agreement Nº. 694409), and from IAP Research Network P7/06 of the Belgian State
Project:
Gobierno de España. ECO2014-55858-P Gobierno de España. MTM2014-55966-P info:eu-repo/grantAgreement/EC/H2020/694409
Keywords:
Beta-mixing
,
Goodness-of-fit tests
,
Local polynomial estimation
,
Nonparametric regression
,
Error distribution
This article proposes a new general methodology for constructing nonparametric and semiparametric Asymptotically Distribution-Free (ADF) tests for semiparametric hypotheses in regression models for possibly dependent data coming from a strictly stationary procThis article proposes a new general methodology for constructing nonparametric and semiparametric Asymptotically Distribution-Free (ADF) tests for semiparametric hypotheses in regression models for possibly dependent data coming from a strictly stationary process. Classical tests based on the difference between the estimated distributions of the restricted and unrestricted regression errors are not ADF. In this article, we introduce a novel transformation of this difference that leads to ADF tests with well-known critical values. The general methodology is illustrated with applications to testing for parametric models against nonparametric or semiparametric alternatives, and semiparametric constrained mean-variance models. Several Monte Carlo studies and an empirical application show that the finite sample performance of the proposed tests is satisfactory in moderate sample sizes.[+][-]