Exploring entanglement and optimization within the Hamiltonian Variational Ansatz
Roeland Wiersema, Cunlu Zhou, Yvette de Sereville, Juan Felipe, Carrasquilla, Yong Baek Kim, Henry Yuen

TL;DR
This paper investigates the Hamiltonian Variational Ansatz (HVA) for quantum algorithms, revealing its favorable properties for optimization, entanglement, and approximation of complex quantum states, with implications for near-term quantum computing.
Contribution
It provides a detailed analysis of HVA's structural properties, entanglement, and optimization landscape, demonstrating its advantages over other ansatzes and identifying a polynomial scaling threshold for over-parameterization.
Findings
HVA exhibits mild barren plateaus and a restricted state space.
Over-parameterization makes the optimization landscape nearly trap-free.
A size-dependent phase transition improves approximation quality and convergence.
Abstract
Quantum variational algorithms are one of the most promising applications of near-term quantum computers; however, recent studies have demonstrated that unless the variational quantum circuits are configured in a problem-specific manner, optimization of such circuits will most likely fail. In this paper, we focus on a special family of quantum circuits called the Hamiltonian Variational Ansatz (HVA), which takes inspiration from the quantum approximation optimization algorithm and adiabatic quantum computation. Through the study of its entanglement spectrum and energy gradient statistics, we find that HVA exhibits favorable structural properties such as mild or entirely absent barren plateaus and a restricted state space that eases their optimization in comparison to the well-studied "hardware-efficient ansatz." We also numerically observe that the optimization landscape of HVA becomes…
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