Affiliation:
1. Artificial Intelligence Research Laboratory Electronics and Telecommunications Research Institute Daejeon Republic of Korea
Abstract
AbstractWe propose a number‐theory‐based quantized mathematical optimization scheme for various NP‐hard and similar problems. Conventional global optimization schemes, such as simulated and quantum annealing, assume stochastic properties that require multiple attempts. Although our quantization‐based optimization proposal also depends on stochastic features (i.e., the white‐noise hypothesis), it provides a more reliable optimization performance. Our numerical analysis equates quantization‐based optimization to quantum annealing, and its quantization property effectively provides global optimization by decreasing the measure of the level sets associated with the objective function. Consequently, the proposed combinatorial optimization method allows the removal of the acceptance probability used in conventional heuristic algorithms to provide a more effective optimization. Numerical experiments show that the proposed algorithm determines the global optimum in less operational time than conventional schemes.
Funder
Institute for Information and Communications Technology Promotion
Subject
Electrical and Electronic Engineering,General Computer Science,Electronic, Optical and Magnetic Materials