info:eu-repo/semantics/article
Asymptotic theory for maximum likelihood estimates in reduced-rank multivariate generalized linear models
Fecha
2018-09Registro en:
Bura, Efstathia; Duarte, S.; Forzani, Liliana Maria; Smucler, Ezequiel; Sued, Raquel Mariela; Asymptotic theory for maximum likelihood estimates in reduced-rank multivariate generalized linear models; Taylor & Francis Ltd; Statistics; 52; 5; 9-2018; 1005-1024
0233-1888
CONICET Digital
CONICET
Autor
Bura, Efstathia
Duarte, S.
Forzani, Liliana Maria
Smucler, Ezequiel
Sued, Raquel Mariela
Resumen
Reduced-rank regression is a dimensionality reduction method with many applications. The asymptotic theory for reduced rank estimators of parameter matrices in multivariate linear models has been studied extensively. In contrast, few theoretical results are available for reduced-rank multivariate generalized linear models. We develop M-estimation theory for concave criterion functions that are maximized over parameter spaces that are neither convex nor closed. These results are used to derive the consistency and asymptotic distribution of maximum likelihood estimators in reduced-rank multivariate generalized linear models, when the response and predictor vectors have a joint distribution. We illustrate our results in a real data classification problem with binary covariates.