HEDIBERT FREITAS LOPES
Projetos de Pesquisa
Unidades Organizacionais
Resumo profissional
Área de pesquisa
Nome para créditos
1 resultados
Resultados de Busca
Agora exibindo 1 - 1 de 1
Artigo Científico Sparse Bayesian Factor Analysis When the Number of Factors Is Unknown(0204) Frühwirth-Schnatter, Sylvia; Hosszejni, Darjus; HEDIBERT FREITAS LOPESThere has been increased research interest in the subfield of sparse Bayesian factor analysis with shrinkage priors, which achieve additional sparsity beyond the natural parsimonity of factor models. In this spirit, we estimate the number of common factors in the widely applied sparse latent factor model with spike-and-slab priors on the factor loadings matrix. Our framework leads to a natural, efficient and simultaneous coupling of model estimation and selection on one hand and model identification and rank estimation (number of factors) on the other hand. More precisely, by embedding the unordered generalised lower trian gular loadings representation into overfitting sparse factor modelling, we obtain posterior summaries regarding factor loadings, common factors as well as the factor dimension via postprocessing draws from our efficient and customized Markov chain Monte Carlo scheme.