On the Expressive Efficiency of Sum Product Networks
James Martens, Venkatesh Medabalimi

TL;DR
This paper analyzes the expressive power of Sum Product Networks (SPNs) with D&C conditions, revealing limitations and depth-related hierarchies in their ability to model distributions, and connecting them to multilinear circuits.
Contribution
It provides the first proof of a depth hierarchy for D&C SPNs and characterizes their computational capabilities and limitations in modeling complex distributions.
Findings
Existence of distributions not efficiently captured by any depth of D&C SPNs
Depth increases the set of distributions D&C SPNs can efficiently model
D&C conditions are necessary and sufficient for a strengthened validity notion
Abstract
Sum Product Networks (SPNs) are a recently developed class of deep generative models which compute their associated unnormalized density functions using a special type of arithmetic circuit. When certain sufficient conditions, called the decomposability and completeness conditions (or "D&C" conditions), are imposed on the structure of these circuits, marginal densities and other useful quantities, which are typically intractable for other deep generative models, can be computed by what amounts to a single evaluation of the network (which is a property known as "validity"). However, the effect that the D&C conditions have on the capabilities of D&C SPNs is not well understood. In this work we analyze the D&C conditions, expose the various connections that D&C SPNs have with multilinear arithmetic circuits, and consider the question of how well they can capture various distributions as…
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Taxonomy
TopicsProduct Development and Customization · Process Optimization and Integration
