info:eu-repo/semantics/article
Testing for serial correlation in hierarchical linear models
Fecha
2018-05Registro en:
Alejo, Osvaldo Javier; Montes Rojas, Gabriel Victorio; Sosa Escudero, Walter; Testing for serial correlation in hierarchical linear models; Elsevier; Journal Of Multivariate Analysis; 165; 5-2018; 101-116
0047-259X
CONICET Digital
CONICET
Autor
Alejo, Osvaldo Javier
Montes Rojas, Gabriel Victorio
Sosa Escudero, Walter
Resumen
This paper proposes a simple hierarchical model and a testing strategy to identify intra-cluster correlations, in the form of nested random effects and serially correlated error components. We focus on intra-cluster serial correlation at different nested levels, a topic that has not been studied in the literature before. A Neyman's C(α) framework is used to derive LM-type tests that allow researchers to identify the appropriate level of clustering as well as the type of intra-group correlation. An extensive Monte Carlo exercise shows that the proposed tests perform well in finite samples and under non-Gaussian distributions.