We consider a robust parametric procedure for estimating the structural parameters in functional measurement error models. The methodology extends the maximum Lq-likelihood approach to the more general problem of independent, but not identically distributed observations and the presence of incidental parameters. The proposal replaces the incidental parameters in the Lq-likelihood with their estimates, which depend on the structural parameter. The resulting estimator, called the maximum Lq-likelihood estimator (MLqE) adapts according to the discrepancy between the data and the postulated model by tuning a single parameter q, with 0 < q < 1, that controls the trade-off between robustness and efficiency. The maximum likelihood estimator is obtained as a particular case when q = 1. We provide asymptotic properties of the MLqE under appropriate regularity conditions. Moreover, we describe the estimating algorithm based on a reweighting procedure, as well as a data-driven proposal for the choice of the tuning parameter q. The approach is illustrated and applied to the problem of estimating a bivariate linear normal relationship, including a small simulation study and an analysis of a real data set.
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Autor | Giménez, Patricia Guarracino, Lucas Galea Rojas, Manuel Jesús |
Título | Maximum L-q-Likelihood estimation in functional measurement error models |
Revista | Statistica Sinica |
ISSN | 1017-0405 |
ISSN electrónico | 1996-8507 |
Volumen | 32 |
Número de publicación | 3 |
Página inicio | 1723 |
Página final | 1743 |
Fecha de publicación | 2022 |
Resumen | We consider a robust parametric procedure for estimating the structural parameters in functional measurement error models. The methodology extends the maximum Lq-likelihood approach to the more general problem of independent, but not identically distributed observations and the presence of incidental parameters. The proposal replaces the incidental parameters in the Lq-likelihood with their estimates, which depend on the structural parameter. The resulting estimator, called the maximum Lq-likelihood estimator (MLqE) adapts according to the discrepancy between the data and the postulated model by tuning a single parameter q, with 0 < q < 1, that controls the trade-off between robustness and efficiency. The maximum likelihood estimator is obtained as a particular case when q = 1. We provide asymptotic properties of the MLqE under appropriate regularity conditions. Moreover, we describe the estimating algorithm based on a reweighting procedure, as well as a data-driven proposal for the choice of the tuning parameter q. The approach is illustrated and applied to the problem of estimating a bivariate linear normal relationship, including a small simulation study and an analysis of a real data set. |
Derechos | acceso restringido |
Agencia financiadora | FONDECYT, Chile |
DOI | 10.5705/ss.202019.0414 |
Editorial | STATISTICA SINICA |
Enlace | |
Id de publicación en WoS | WOS:000818975200021 |
Palabra clave | Functional measurement Incidental parameters Error models Maximum Lq-likelihood Robustness |
Tema ODS | 03 Good Health and Well-being |
Tema ODS español | 03 Salud y bienestar |
Temática | Matemática física y química |
Tipo de documento | artículo |