Better Initialization Heuristics for Order-based Bayesian Network Structure Learning

Authors

  • Walter Perez Urcia Universidade de São Paulo
  • Denis Deratani Mauá Universidad de São Paulo

DOI:

https://doi.org/10.5753/jidm.2016.1587

Keywords:

Bayesian networks, Model Selection, Local Search, Parent Set Selection

Abstract

An effective approach for learning Bayesian network structures is to
perform a greedy search on the space of variable orderings using a
restricted space of parent sets. Typically, the search is initialized
with a randomly generated ordering. This can lead to poor local optima
and hurt the performance of the method. In this article we develop
informed heuristics for generating initial solutions to order-based
structure learning search. Experiments with a large collection of
real-world data sets demonstrate that our heuristics increase the
quality of the solutions found with a negligible overhead.

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Published

2017-02-03

How to Cite

Perez Urcia, W., & Deratani Mauá, D. (2017). Better Initialization Heuristics for Order-based Bayesian Network Structure Learning. Journal of Information and Data Management, 7(2), 181. https://doi.org/10.5753/jidm.2016.1587

Issue

Section

KDMiLe 2015