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Empirical Bayes for Dynamic Bayesian Networks Using Generalized Variational Inference

25 June 2024
Vyacheslav Kungurtsev
Apaar
Aarya Khandelwal
Parth Sandeep Rastogi
Bapi Chatterjee
Jakub Mareˇcek
    BDL
ArXiv (abs)PDFHTML
Abstract

In this work, we demonstrate the Empirical Bayes approach to learning a Dynamic Bayesian Network. By starting with several point estimates of structure and weights, we can use a data-driven prior to subsequently obtain a model to quantify uncertainty. This approach uses a recent development of Generalized Variational Inference, and indicates the potential of sampling the uncertainty of a mixture of DAG structures as well as a parameter posterior.

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