• DocumentCode
    816187
  • Title

    Convergence of Neural Networks for Programming Problems via a Nonsmooth Łojasiewicz Inequality

  • Author

    Forti, M. ; Nistri, P. ; Quincampoix, M.

  • Author_Institution
    Dipt. di Ingegneria dell´Informazione, Siena Univ.
  • Volume
    17
  • Issue
    6
  • fYear
    2006
  • Firstpage
    1471
  • Lastpage
    1486
  • Abstract
    This paper considers a class of neural networks (NNs) for solving linear programming (LP) problems, convex quadratic programming (QP) problems, and nonconvex QP problems where an indefinite quadratic objective function is subject to a set of affine constraints. The NNs are characterized by constraint neurons modeled by ideal diodes with vertical segments in their characteristic, which enable to implement an exact penalty method. A new method is exploited to address convergence of trajectories, which is based on a nonsmooth Lstrokojasiewicz inequality for the generalized gradient vector field describing the NN dynamics. The method permits to prove that each forward trajectory of the NN has finite length, and as a consequence it converges toward a singleton. Furthermore, by means of a quantitative evaluation of the Lstrokojasiewicz exponent at the equilibrium points, the following results on convergence rate of trajectories are established: 1) for nonconvex QP problems, each trajectory is either exponentially convergent, or convergent in finite time, toward a singleton belonging to the set of constrained critical points; 2) for convex QP problems, the same result as in 1) holds; moreover, the singleton belongs to the set of global minimizers; and 3) for LP problems, each trajectory converges in finite time to a singleton belonging to the set of global minimizers. These results, which improve previous results obtained via the Lyapunov approach, are true independently of the nature of the set of equilibrium points, and in particular they hold even when the NN possesses infinitely many nonisolated equilibrium points
  • Keywords
    Lyapunov methods; concave programming; convergence; convex programming; linear programming; neural nets; quadratic programming; Lyapunov approach; convex quadratic programming; forward trajectory; linear programming; neural networks convergence; nonconvex quadratic programming; nonsmooth Lojasiewicz inequality; Constraint optimization; Convergence; Diodes; Linear programming; Neural networks; Neurons; Quadratic programming; Robot programming; Surveillance; Łojasiewicz inequality; Convergence in finite time; exponential convergence; generalized gradient; neural networks (NNs); programming problems; Algorithms; Information Storage and Retrieval; Neural Networks (Computer); Pattern Recognition, Automated; Signal Processing, Computer-Assisted;
  • fLanguage
    English
  • Journal_Title
    Neural Networks, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1045-9227
  • Type

    jour

  • DOI
    10.1109/TNN.2006.879775
  • Filename
    4012024