Authors
Chia Cheng Chang, Arjun Gambhir, Travis S Humble, Shigetoshi Sota
Publication date
2019/7/16
Journal
Scientific reports
Volume
9
Issue
1
Pages
10258
Publisher
Nature Publishing Group UK
Description
Numerous scientific and engineering applications require numerically solving systems of equations. Classically solving a general set of polynomial equations requires iterative solvers, while linear equations may be solved either by direct matrix inversion or iteratively with judicious preconditioning. However, the convergence of iterative algorithms is highly variable and depends, in part, on the condition number. We present a direct method for solving general systems of polynomial equations based on quantum annealing, and we validate this method using a system of second-order polynomial equations solved on a commercially available quantum annealer. We then demonstrate applications for linear regression, and discuss in more detail the scaling behavior for general systems of linear equations with respect to problem size, condition number, and search precision. Finally, we define an iterative annealing …
Total citations
20192020202120222023202473921138
Scholar articles
CC Chang, A Gambhir, TS Humble, S Sota - Scientific reports, 2019