Distance-based Learning of Hypertrees

Fallat, Shaun, Khodamoradi, Kamyar, Kirkpatrick, David, Maliuk, Valerii, Mojallal, S. Ahmad, Zilles, Sandra

arXiv.org Artificial Intelligence 

We study the problem of learning hypergraphs with shortest-path queries (SP -queries), and present the first provably optimal online algorithm for a broad and natural class of hypertrees which we call orderly hypertrees. Our online algorithm can be transformed into a provably optimal offline algorithm. Orderly hypertrees can be positioned within the Fagin hierarchy of acyclic hypergraph (well-studied in database theory), and strictly encompass the broadest class in this hierarchy that is learnable with subquadratic SP -query complexity. Recognizing that in some contexts, such as evolutionary tree reconstruction, distance measurements can degrade with increased distance, we also consider a learning model that uses bounded distance queries. In this model, we demonstrate asymptotically tight complexity bounds for learning general hypertrees.

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