Improved Computation for Levenberg–Marquardt Training
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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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Authors
2Topics & keywords
Topics
Keywords
- Hessian matrix
- Levenberg–Marquardt algorithm
- Jacobian matrix and determinant
- Computation
- Multiplication (music)
- Computer science
- Matrix (chemical analysis)
- Algorithm
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