Query complexity in expectation
Jedrzej Kaniewski (CQT, Singapore, and QuTech, Delft), Troy Lee, (Nanyang Technological University, CQT, Singapore), Ronald de Wolf (CWI, and University of Amsterdam)

TL;DR
This paper characterizes the query complexity in expectation for computing functions, revealing differences between classical and quantum models, and connects these complexities to polytope extension complexities and hierarchies.
Contribution
It provides exact characterizations of randomized and quantum query complexities via polynomial degrees and links these to polytope extension complexities and hierarchies.
Findings
Quantum complexity can be exponentially smaller than classical for some functions.
Query complexities relate to extension complexities of polytopes.
Efficient quantum algorithms can approximate slack matrices with low psd-rank.
Abstract
We study the query complexity of computing a function f:{0,1}^n-->R_+ in expectation. This requires the algorithm on input x to output a nonnegative random variable whose expectation equals f(x), using as few queries to the input x as possible. We exactly characterize both the randomized and the quantum query complexity by two polynomial degrees, the nonnegative literal degree and the sum-of-squares degree, respectively. We observe that the quantum complexity can be unboundedly smaller than the classical complexity for some functions, but can be at most polynomially smaller for functions with range {0,1}. These query complexities relate to (and are motivated by) the extension complexity of polytopes. The linear extension complexity of a polytope is characterized by the randomized communication complexity of computing its slack matrix in expectation, and the semidefinite (psd)…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Complexity and Algorithms in Graphs · Machine Learning and Algorithms
