Low depth mechanisms for quantum optimization
Jarrod R. McClean, Matthew P. Harrigan, Masoud Mohseni, Nicholas C., Rubin, Zhang Jiang, Sergio Boixo, Vadim N. Smelyanskiy, Ryan Babbush, Hartmut, Neven

TL;DR
This paper introduces a physical framework based on quantum walks and graph dynamics to understand and improve quantum algorithms for classical optimization, revealing pitfalls and guiding enhancements.
Contribution
It develops a physical language connecting kinetic energy and graph Laplacians to analyze quantum optimization algorithms and suggests new strategies for their improvement.
Findings
Wavefunction confinement and phase randomization can hinder optimization.
Entanglement may be detrimental in certain quantum optimization methods.
Insights into initialization and layerwise training improve QAOA performance.
Abstract
One of the major application areas of interest for both near-term and fault-tolerant quantum computers is the optimization of classical objective functions. In this work, we develop intuitive constructions for a large class of these algorithms based on connections to simple dynamics of quantum systems, quantum walks, and classical continuous relaxations. We focus on developing a language and tools connected with kinetic energy on a graph for understanding the physical mechanisms of success and failure to guide algorithmic improvement. This physical language, in combination with uniqueness results related to unitarity, allow us to identify some potential pitfalls from kinetic energy fundamentally opposing the goal of optimization. This is connected to effects from wavefunction confinement, phase randomization, and shadow defects lurking in the objective far away from the ideal solution.…
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