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Bayesian Approach to Linear Bayesian Networks

27 November 2023
Seyong Hwang
Kyoungjae Lee
Sunmin Oh
Gunwoong Park
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Abstract

This study proposes the first Bayesian approach for learning high-dimensional linear Bayesian networks. The proposed approach iteratively estimates each element of the topological ordering from backward and its parent using the inverse of a partial covariance matrix. The proposed method successfully recovers the underlying structure when Bayesian regularization for the inverse covariance matrix with unequal shrinkage is applied. Specifically, it shows that the number of samples n=Ω(dM2log⁡p)n = \Omega( d_M^2 \log p)n=Ω(dM2​logp) and n=Ω(dM2p2/m)n = \Omega(d_M^2 p^{2/m})n=Ω(dM2​p2/m) are sufficient for the proposed algorithm to learn linear Bayesian networks with sub-Gaussian and 4m-th bounded-moment error distributions, respectively, where ppp is the number of nodes and dMd_MdM​ is the maximum degree of the moralized graph. The theoretical findings are supported by extensive simulation studies including real data analysis. Furthermore the proposed method is demonstrated to outperform state-of-the-art frequentist approaches, such as the BHLSM, LISTEN, and TD algorithms in synthetic data.

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