Unitary Branching Programs: Learnability and Lower Bounds
Paper in proceeding, 2021

Bounded width branching programs are a formalism that can be used to capture the notion of non-uniform constant-space computation. In this work, we study a generalized version of bounded width branching programs where instructions are defined by unitary matrices of bounded dimension. We introduce a new learning framework for these branching programs that leverages on a combination of local search techniques with gradient descent over Riemannian manifolds. We also show that gapped, read-once branching programs of bounded dimension can be learned with a polynomial number of queries in the presence of a teacher. Finally, we provide explicit near-quadratic size lower-bounds for bounded-dimension unitary branching programs, and exponential size lower-bounds for bounded-dimension read-once gapped unitary branching programs. The first lower bound is proven using a combination Neeiporuk's lower bound technique with classic results from algebraic geometry. The second lower bound is proven within the framework of communication complexity theory.

Author

Fidel Ernesto Diaz Andino

University of Sao Paulo (USP)

Maria Kokkou

Student at Chalmers

Mateus de Oliveira Oliveira

University of Bergen

Farhad Vadiee

University of Bergen

Proceedings of Machine Learning Research

26403498 (eISSN)

Vol. 139 297 -306
9781713845065 (ISBN)

38th International Conference on Machine Learning, ICML 2021
Online, ,

Subject Categories (SSIF 2011)

Geometry

Discrete Mathematics

Mathematical Analysis

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Latest update

2/25/2025