articleIEEE Transactions on Neural NetworksApr 20, 2010Closed access

Improved Computation for Levenberg–Marquardt Training

Auburn University

PubMed
Indexed incrossrefpubmed

Abstract

The improved computation presented in this paper is aimed to optimize the neural networks learning process using Levenberg-Marquardt (LM) algorithm. Quasi-Hessian matrix and gradient vector are computed directly, without Jacobian matrix multiplication and storage. The memory limitation problem for LM training is solved. Considering the symmetry of quasi-Hessian matrix, only elements in its upper/lower triangular array need to be calculated. Therefore, training speed is improved significantly, not only because of the smaller array stored in memory, but also the reduced operations in quasi-Hessian matrix calculation. The improved memory and time efficiencies are especially true for large sized patterns training.

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615
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Authors

2

Topics & keywords

Keywords
  • Hessian matrix
  • Levenberg–Marquardt algorithm
  • Jacobian matrix and determinant
  • Computation
  • Multiplication (music)
  • Computer science
  • Matrix (chemical analysis)
  • Algorithm
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