An Improved Admissible Heuristic for Learning Optimal Bayesian Networks
Yuan, Changhe, Malone, Brandon
Recently two search algorithms, A* and breadth-first branch and bound (BFBnB), were developed based on a simple admissible heuristic for learning Bayesian network structures that optimize a scoring function. The heuristic represents a relaxation of the learning problem such that each variable chooses optimal parents independently. As a result, the heuristic may contain many directed cycles and result in a loose bound. This paper introduces an improved admissible heuristic that tries to avoid directed cycles within small groups of variables. A sparse representation is also introduced to store only the unique optimal parent choices. Empirical results show that the new techniques significantly improved the efficiency and scalability of A* and BFBnB on most of datasets tested in this paper.
Oct-16-2012
- Country:
- North America > United States (0.93)
- Genre:
- Research Report > New Finding (0.34)
- Industry:
- Education (0.34)