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Convergence of Quasi-Newton Method for Fully Complex-Valued Neural Networks
Authors:Dongpo Xu  Jian Dong  Chengdong Zhang
Affiliation:1.School of Mathematics and Statistics,Northeast Normal University,Changchun,People’s Republic of China;2.College of Science,Harbin Engineering University,Harbin,People’s Republic of China
Abstract:In this paper, based on Wirtinger calculus, we introduce a quasi-Newton method for training complex-valued neural networks with analytic activation functions. Using the duality between Wirtinger calculus and multivariate real calculus, we prove a convergence theorem of the proposed method for the minimization of real-valued complex functions. This lays the theoretical foundation for the complex quasi-Newton method and generalizes Powell’s well-known result for the real-valued case. The simulation results are given to show the effectiveness of the method.
Keywords:
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