We are extremely pleased to invite you to our final for this semester seminar of Seminar series in Statistics and Data Science
Speaker: Sylvia Frühwirth-Schnatter, Professor, Vienna University of Economics and Business
Title: Sparse Finite Bayesian Factor Analysis when the Number of Factors is Unknown
When? Friday 07.06.2024, 14:15-15:15
Where? Erling Svedrups plass and Zoom https://uio.zoom.us/j/68591073814?pwd=TeP0Ew0rieJIV8iXebZXgjmjk5tD4y.1
Abstract:
Factor analysis is a popular method to obtain a sparse representation of the covariance matrix of multivariate observations and to uncover the unobserved driving factors behind the observed correlation. However, it is challenging to estimate the unknown number of factors and to recover the factor loading matrix from the data. The present talk reviews recent research in the area of sparse Bayesian factor analysis (BFA) that successfully addresses these issues within a Bayesian framework:
(a) the approach relies on the choice of well-calibrated, highly structured priors. Finite and infinite cumulative shrinkage process (CUSP) priors play a crucial role in recovering the number of factors, while elementwise spike-and-slab priors allow to reveal the finer structure of the factor loading matrix (Frühwirth-Schnatter, 2023);
(b) to achieve full identification of the factor model, the approach operates in the class of generalized lower triangular (GLT) factor models that generalizes common way of solving rotational invariance and addresses variance identification through a counting rule (Frühwirth-Schnatter, Hosszejni and Lopes, 2023);
(c) fitting models to data under these priors requires efficient algorithms to sample from the full posterior distribution and a reversible jump MCMC sampler is discussed that moves across models of different dimensions (Frühwirth-Schnatter, Hosszejni and Lopes, 2024).
Applications to financial time series will serve as an illustration.
References:
Sylvia Frühwirth-Schnatter (2023): Generalized Cumulative Shrinkage Process Priors with Applications to Sparse Bayesian Factor Analysis, Philosophical Transactions of the Royal Society A, 381: 20220148. DOI:10.1098/rsta.2022.0148.
Sylvia Frühwirth-Schnatter, Darjus Hosszejni and Hedibert F. Lopes (2023): When is counts - Econometric Identification of Factor Models Based on GLT Structures, Econometrics, 11 (4), 26. DOI: 10.3390/econometrics11040026.
Sylvia Frühwirth-Schnatter, Darjus Hosszejni and Hedibert F. Lopes (2024): Sparse finite Bayesian Factor Analysis when the Number of Factors is Unknown, Bayesian Analysis, accepted for publication.
Welcome!
Best regards,
Sven Ove Samuelsen & Aliaksandr Hubin