Training A Quantum Optimizer
نویسندگان
چکیده
We study a variant of the quantum approximate optimization algorithm [ E. Farhi, J. Goldstone, and S. Gutmann, arXiv:1411.4028] with slightly different parametrization and different objective: rather than looking for a state which approximately solves an optimization problem, our goal is to find a quantum algorithm that, given an instance of MAX-2-SAT, will produce a state with high overlap with the optimal state. Using a machine learning approach, we chose a “training set” of instances and optimized the parameters to produce large overlap for the training set. We then tested these optimized parameters on a larger instance set. As a training set, we used a subset of the hard instances studied by E. Crosson, E. Farhi, C. Yen-Yu Lin, H.-H. Lin, and P. Shor (CFLLS) [arXiv:1401.7320]. When tested on the full set, the parameters that we find produce significantly larger overlap than the optimized annealing times of CFLLS. Testing on other random instances from 20 to 28 bits continues to show improvement over annealing, with the improvement being most notable on the hardest instances. Further tests on instances of MAX-3-SAT also showed improvement on the hardest instances. This algorithm may be a possible application for near-term quantum computers with limited coherence times.
منابع مشابه
Evaluating the effectiveness of quantum leadership skills training on thinking style and knowledge sharing behavior of school principals
The aim of this study was to determine the effectiveness of quantum skills training on thinking style and knowledge sharing behavior of girls' high school principals in Isfahan. This research is a type of exploratory combined research that has a quantitative and qualitative nature. In the qualitative part, the theme analysis method was used inductively and in the quantitative part, the quasi-ex...
متن کاملOrganic Solar - Organic Solar Cell Simulation and Tuning with Optimizer
INSIDE Drift-Diffusion Mode-Space Approach to Subband Transport in Devices with Transverse Quantum Confinement ......................................... 3 Monte Carlo Device Modeling of a Self-Aligned n-MOSFET ........................................................... 8 MixedMode Netlist Generation Using Gateway ..... 11 Hints, Tips and Solutions ......................................... 14 Or...
متن کاملEvaluating the effectiveness of quantum leadership skills training on thinking style and knowledge sharing behavior of school principals
The aim of this study was to determine the effectiveness of quantum skills training on thinking style and knowledge sharing behavior of girls' high school principals in Isfahan. This research is a type of exploratory combined research that has a quantitative and qualitative nature. In the qualitative part, the theme analysis method was used inductively and in the quantitative part, the quasi-ex...
متن کاملDistribution Systems Reconfiguration Using Pattern Recognizer Neural Networks
A novel intelligent neural optimizer with two objective functions is designed for electrical distribution systems. The presented method is faster than alternative optimization methods and is comparable with the most powerful and precise ones. This optimizer is much smaller than similar neural systems. In this work, two intelligent estimators are designed, a load flow program is coded, and a spe...
متن کاملGaussian optimizers for entropic inequalities in quantum information
We survey the state of the art for the proof of the quantum Gaussian optimizer conjectures of quantum information theory. These fundamental conjectures state that quantum Gaussian input states are the solution to several optimization problems involving quantum Gaussian channels. These problems are the quantum counterpart of three fundamental results of functional analysis and probability: the E...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2016