Abstract
In this article we consider Bayesian inference for partially observed Andersson-Madigan-Perlman (AMP) Gaussian chain graph (CG) models. Such models are of particular interest in applications such as biological networks and financial time series. The model itself features a variety of constraints which make both prior modeling and computational inference challenging. We develop a framework for the aforementioned challenges, using a sequential Monte Carlo (SMC) method for statistical inference. Our approach is illustrated on both simulated data as well as real case studies from university graduation rates and a pharmacokinetics study.
Original language | English (US) |
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Pages (from-to) | 35-54 |
Number of pages | 20 |
Journal | Foundations of Data Science |
Volume | 2 |
Issue number | 1 |
DOIs | |
State | Published - Mar 2020 |