Author
Robeva, E
Seigal, A
Journal title
Information and Inference
DOI
10.1093/imaiai/iay009
Issue
2
Volume
8
Last updated
2022-12-27T16:43:29.94+00:00
Page
273-288
Abstract
In this article we show the duality between tensor networks and undirected graphical models with discrete variables. We study tensor networks on hypergraphs, which we call tensor hypernetworks. We show that the tensor hypernetwork on a hypergraph exactly corresponds to the graphical model given by the dual hypergraph. We translate various notions under duality. For example, marginalization in a graphical model is dual to contraction in the tensor network. Algorithms also translate under duality. We show that belief propagation corresponds to a known algorithm for tensor network contraction. This article is a reminder that the research areas of graphical models and tensor networks can benefit from interaction.
Symplectic ID
1027140
Favourite
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Publication type
Journal Article
Publication date
21 Jun 2018
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