Faster than Classical Quantum Algorithm for dense Formulas of Exact Satisfiability and Occupation Problems
Salvatore Mandr\`a, Gian Giacomo Guerreschi, Al\'an Aspuru-Guzik

TL;DR
This paper introduces an exact quantum algorithm that outperforms classical algorithms for dense formulas of XSAT and related problems, offering faster solutions and counting capabilities by leveraging a restricted subspace search.
Contribution
The paper presents a novel quantum algorithm for XSAT that is faster than any known classical method for dense formulas, with applications to Hamiltonian cycle problems.
Findings
Quantum algorithm has worst-case complexity $O( ext{sqrt}(2^{n-M'}))$ for finding solutions.
The algorithm solves the Hamiltonian cycle problem in $O(2^{n/4})$ for 3-regular graphs.
Quantum approach outperforms classical heuristics like WalkSAT near the satisfiability threshold.
Abstract
We present an exact quantum algorithm for solving the Exact Satisfiability (XSAT) problem, which belongs to the important NP-complete complexity class. The algorithm is based on an intuitive approach that can be divided into two parts: First, the identification and efficient characterization of a restricted subspace that contains all the valid assignments of the XSAT; Second, a quantum search in such restricted subspace. The quantum algorithm can be used either to find a valid assignment (or to certify that no solution exists) or to count the total number of valid assignments. The query complexities for the worst-case are respectively bounded by and , where is the number of variables and the number of linearly independent clauses. Remarkably, the proposed quantum algorithm results to be faster than any known exact…
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