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A continuous Hopfield network equilibrium points algorithm
Affiliation:1. Instituto Nacional de Estadı́stica, Josefa Valcárcel 46, 28027 Madrid, Spain;2. Department of Statistics and Operations Research, Faculty of Mathematics, Universidad Complutense de Madrid, Madrid 28040, Spain;1. Instituto de Matemática Interdisciplinar, Departamento de Matemática Aplicada, Universidad Complutense de Madrid, Spain;2. National Physical Laboratory, Teddington, UK;3. Department of Mathematics and Statistics, University of Limerick, Limerick, Ireland;1. Dipartimento di Matematica “F. Enriques”, Università degli Studi di Milano, Via C. Saldini, 50, I-20133 Milano, Italy;2. Departamento de Algebra, Facultad de Ciencias Matemáticas, Plaza de las Ciencias, 3 – Universidad Complutense de Madrid, E-28040 Madrid, Spain;3. Department of Mathematics, University of Oslo, P.O. Box 1053 Blindern, NO-0316 Oslo, Norway;1. Florence School of Regulation (FSR), European University Institute, San Domenico di Fiesole I-50014, Italy;2. Institute for Research in Technology (IIT), Technical School of Engineering (ICAI), Universidad Pontificia Comillas, Madrid E-28015, Spain
Abstract:The continuous Hopfield network (CHN) is a classical neural network model. It can be used to solve some classification and optimization problems in the sense that the equilibrium points of a differential equation system associated to the CHN is the solution to those problems. The Euler method is the most widespread algorithm to obtain these CHN equilibrium points, since it is the simplest and quickest method to simulate complex differential equation systems. However, this method is highly sensitive with respect to initial conditions and it requires a lot of CPU time for medium or greater size CHN instances. In order to avoid these shortcomings, a new algorithm which obtains one equilibrium point for the CHN is introduced in this paper. It is a variable time-step method with the property that the convergence time is shortened; moreover, its robustness with respect to initial conditions will be proven and some computational experiences will be shown in order to compare it with the Euler method.
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