On the Relationship between Sum-Product Networks and Bayesian Networks
January 06, 2015 Β· Declared Dead Β· π International Conference on Machine Learning
"No code URL or promise found in abstract"
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Authors
Han Zhao, Mazen Melibari, Pascal Poupart
arXiv ID
1501.01239
Category
cs.AI: Artificial Intelligence
Cross-listed
stat.ML
Citations
94
Venue
International Conference on Machine Learning
Last Checked
3 months ago
Abstract
In this paper, we establish some theoretical connections between Sum-Product Networks (SPNs) and Bayesian Networks (BNs). We prove that every SPN can be converted into a BN in linear time and space in terms of the network size. The key insight is to use Algebraic Decision Diagrams (ADDs) to compactly represent the local conditional probability distributions at each node in the resulting BN by exploiting context-specific independence (CSI). The generated BN has a simple directed bipartite graphical structure. We show that by applying the Variable Elimination algorithm (VE) to the generated BN with ADD representations, we can recover the original SPN where the SPN can be viewed as a history record or caching of the VE inference process. To help state the proof clearly, we introduce the notion of {\em normal} SPN and present a theoretical analysis of the consistency and decomposability properties. We conclude the paper with some discussion of the implications of the proof and establish a connection between the depth of an SPN and a lower bound of the tree-width of its corresponding BN.
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