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A stochastic conjugate gradient method for the approximation of functions
Authors:Hong Jiang  Paul Wilford
Institution:
  • Bell Laboratories, Alcatel-Lucent, 700 Mountain Ave, P.O. Box 636, Murray Hill, NJ 07974-0636, United States
  • Abstract:A stochastic conjugate gradient method for the approximation of a function is proposed. The proposed method avoids computing and storing the covariance matrix in the normal equations for the least squares solution. In addition, the method performs the conjugate gradient steps by using an inner product that is based on stochastic sampling. Theoretical analysis shows that the method is convergent in probability. The method has applications in such fields as predistortion for the linearization of power amplifiers.
    Keywords:Stochastic conjugate gradient  Approximation of functions  Convergence in probability  Least squares solution  Polynomial predistortion  Power amplifier linearization
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