Learning Chordal Markov Networks via Branch and Bound
–Neural Information Processing Systems
We present a new algorithmic approach for the task of finding a chordal Markov network structure that maximizes a given scoring function. The algorithm is based on branch and bound and integrates dynamic programming for both domain pruning and for obtaining strong bounds for search-space pruning. Empirically, we show that the approach dominates in terms of running times a recent integer programming approach (and thereby also a recent constraint optimization approach) for the problem.
Neural Information Processing Systems
Nov-21-2025, 16:11:23 GMT
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