Amanote Research

Amanote Research

    RegisterSign In

Computational Weight of Network Traffic Sampling Techniques

doi 10.1109/iscc.2014.6912467
Full Text
Open PDF
Abstract

Available in full text

Date

June 1, 2014

Authors
Joao Marco C. SilvaPaulo CarvalhoSolange Rito Lima
Publisher

IEEE


Related search

Mining and Control of Network Traffic by Computational Intelligence

Studies in Computational Intelligence
Artificial Intelligence
2011English

Importance Sampling Based Internet Traffic Engineering Under Self-Similar Network Traffic Model

English

Weight Estimation From Frame Sequences Using Computational Intelligence Techniques

2012English

Multiscale Traffic Processing Techniques for Network Inference and Control

2006English

Graph Sampling Approach for Reducing Computational Complexity of Large-Scale Social Network

Journal of Innovative Technology and Education
2016English

Application of Estimation Techniques on Queue Lengths Estimation in Traffic Network

2008English

An Efficient Technique for Network Traffic Summarization Using Multiview Clustering and Statistical Sampling

ICST Transactions on Scalable Information Systems)</
2015English

Combining Statistical and Spectral Analysis Techniques in Network Traffic Anomaly Detection

English

Sub-Sampling PLL Techniques

2015English

Amanote Research

Note-taking for researchers

Follow Amanote

© 2026 Amaplex Software S.P.R.L. All rights reserved.

Privacy PolicyRefund Policy