Optimizing embedding-related quantum annealing parameters for reducing hardware bias
Aaron Barbosa, Elijah Pelofske, Georg Hahn, Hristo N. Djidjev

TL;DR
This paper presents a method to optimize quantum annealing parameters across a class of problems, improving solution quality by reducing hardware bias effects through a training and testing approach.
Contribution
The authors introduce a class-wide parameter optimization technique for quantum annealers, enhancing performance without per-instance tuning.
Findings
Significant improvement in annealing results with optimized parameters
Effective parameter transfer from training to unseen problem instances
Applicable to various graph problems like Max Clique, Max Cut, and Graph Partitioning
Abstract
Quantum annealers have been designed to propose near-optimal solutions to NP-hard optimization problems. However, the accuracy of current annealers such as the ones of D-Wave Systems, Inc., is limited by environmental noise and hardware biases. One way to deal with these imperfections and to improve the quality of the annealing results is to apply a variety of pre-processing techniques such as spin reversal (SR), anneal offsets (AO), or chain weights (CW). Maximizing the effectiveness of these techniques involves performing optimizations over a large number of parameters, which would be too costly if needed to be done for each new problem instance. In this work, we show that the aforementioned parameter optimization can be done for an entire class of problems, given each instance uses a previously chosen fixed embedding. Specifically, in the training phase, we fix an embedding E of a…
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Taxonomy
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