On the Relationship Between Probabilistic Circuits and Determinantal Point Processes

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Authors Honghua Zhang, Steven Holtzen, Guy Van den Broeck arXiv ID 2006.15233 Category cs.AI: Artificial Intelligence Cross-listed cs.LG Citations 13 Venue Conference on Uncertainty in Artificial Intelligence Last Checked 3 months ago
Abstract
Scaling probabilistic models to large realistic problems and datasets is a key challenge in machine learning. Central to this effort is the development of tractable probabilistic models (TPMs): models whose structure guarantees efficient probabilistic inference algorithms. The current landscape of TPMs is fragmented: there exist various kinds of TPMs with different strengths and weaknesses. Two of the most prominent classes of TPMs are determinantal point processes (DPPs) and probabilistic circuits (PCs). This paper provides the first systematic study of their relationship. We propose a unified analysis and shared language for discussing DPPs and PCs. Then we establish theoretical barriers for the unification of these two families, and prove that there are cases where DPPs have no compact representation as a class of PCs. We close with a perspective on the central problem of unifying these tractable models.
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