Benchmarking Adaptative Variational Quantum Algorithms on QUBO Instances
Gloria Turati (1), Maurizio Ferrari Dacrema (1), Paolo Cremonesi (1) ((1) Politecnico di Milano)

TL;DR
This paper systematically compares various adaptive variational quantum algorithms for solving QUBO problems, highlighting their performance, computational efficiency, and the impact of hyperparameter tuning on near-term quantum devices.
Contribution
It introduces a new baseline method, RA-VQE, and provides a comprehensive benchmark analysis of three adaptive VQAs against traditional algorithms like QAOA.
Findings
Adaptive VQAs outperform traditional VQAs in solution quality.
Hyperparameter tuning significantly affects algorithm performance.
RA-VQE serves as an effective baseline for future research.
Abstract
In recent years, Variational Quantum Algorithms (VQAs) have emerged as a promising approach for solving optimization problems on quantum computers in the NISQ era. However, one limitation of VQAs is their reliance on fixed-structure circuits, which may not be taylored for specific problems or hardware configurations. A leading strategy to address this issue are Adaptative VQAs, which dynamically modify the circuit structure by adding and removing gates, and optimize their parameters during the training. Several Adaptative VQAs, based on heuristics such as circuit shallowness, entanglement capability and hardware compatibility, have already been proposed in the literature, but there is still lack of a systematic comparison between the different methods. In this paper, we aim to fill this gap by analyzing three Adaptative VQAs: Evolutionary Variational Quantum Eigensolver (EVQE), Variable…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Neural Networks and Reservoir Computing · Metaheuristic Optimization Algorithms Research
