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Fast Computational Approach to the Levenberg-Marquardt Algorithm for Training Feedforward Neural Networks

Jarosław Bilski, Jacek Smoląg, Bartosz Kowalczyk, Konrad Grzanek, Ivan Izonin

2023Journal of Artificial Intelligence and Soft Computing Research58 citationsDOIOpen Access PDF

Abstract

Abstract This paper presents a parallel approach to the Levenberg-Marquardt algorithm (LM). The use of the Levenberg-Marquardt algorithm to train neural networks is associated with significant computational complexity, and thus computation time. As a result, when the neural network has a big number of weights, the algorithm becomes practically ineffective. This article presents a new parallel approach to the computations in Levenberg-Marquardt neural network learning algorithm. The proposed solution is based on vector instructions to effectively reduce the high computational time of this algorithm. The new approach was tested on several examples involving the problems of classification and function approximation, and next it was compared with a classical computational method. The article presents in detail the idea of parallel neural network computations and shows the obtained acceleration for different problems.

Topics & Concepts

Levenberg–Marquardt algorithmArtificial neural networkComputer scienceComputationAlgorithmFeedforward neural networkComputational complexity theoryArtificial intelligenceAccelerationPhysicsClassical mechanicsNeural Networks and ApplicationsFuzzy Logic and Control SystemsAdvanced Scientific Research Methods
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