Approximation of regression-based fault minimization for network traffic

Volume: 18, Issue: 4, Pages: 1802 - 1802
Published: Aug 1, 2020
Abstract
This research associates three distinct approaches for computer network traffic prediction. They are the traditional stochastic gradient descent (SGD) using a few random samplings instead of the complete dataset for each iterative calculation, the gradient descent algorithm (GDA) which is a well-known optimization approach in Deep Learning, and the proposed method. The network traffic is computed from the traffic load (data and multimedia) of...
Paper Details
Title
Approximation of regression-based fault minimization for network traffic
Published Date
Aug 1, 2020
Volume
18
Issue
4
Pages
1802 - 1802
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