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Bayesian Network Learning via Topological Order

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arxiv 1701.05654 v2 pith:HWX7C5TK submitted 2017-01-20 stat.ML cs.DS

Bayesian Network Learning via Topological Order

classification stat.ML cs.DS
keywords networkconstraintsiterativetopologicalalgorithmsbayesianlearningmodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose a mixed integer programming (MIP) model and iterative algorithms based on topological orders to solve optimization problems with acyclic constraints on a directed graph. The proposed MIP model has a significantly lower number of constraints compared to popular MIP models based on cycle elimination constraints and triangular inequalities. The proposed iterative algorithms use gradient descent and iterative reordering approaches, respectively, for searching topological orders. A computational experiment is presented for the Gaussian Bayesian network learning problem, an optimization problem minimizing the sum of squared errors of regression models with L1 penalty over a feature network with application of gene network inference in bioinformatics.

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