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Multi-Step Internet Traffic Forecasting Models with Variable Forecast Horizons for Proactive Network Management
by
Haque, Anwar
, Sidebottom, Greg
, Saha, Sajal
in
Accuracy
/ Algorithms
/ anomaly detection
/ Business planning
/ Business plans
/ Communications networks
/ Comparative analysis
/ Forecasting
/ gradient boosting
/ gradient descent
/ Industry forecasts
/ Internet
/ Internet service providers
/ Machine learning
/ Neural networks
/ Performance evaluation
/ Planning
/ Quality of service
/ Security software
/ traffic forecast
/ traffic prediction
/ Wireless networks
2024
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Multi-Step Internet Traffic Forecasting Models with Variable Forecast Horizons for Proactive Network Management
by
Haque, Anwar
, Sidebottom, Greg
, Saha, Sajal
in
Accuracy
/ Algorithms
/ anomaly detection
/ Business planning
/ Business plans
/ Communications networks
/ Comparative analysis
/ Forecasting
/ gradient boosting
/ gradient descent
/ Industry forecasts
/ Internet
/ Internet service providers
/ Machine learning
/ Neural networks
/ Performance evaluation
/ Planning
/ Quality of service
/ Security software
/ traffic forecast
/ traffic prediction
/ Wireless networks
2024
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Do you wish to request the book?
Multi-Step Internet Traffic Forecasting Models with Variable Forecast Horizons for Proactive Network Management
by
Haque, Anwar
, Sidebottom, Greg
, Saha, Sajal
in
Accuracy
/ Algorithms
/ anomaly detection
/ Business planning
/ Business plans
/ Communications networks
/ Comparative analysis
/ Forecasting
/ gradient boosting
/ gradient descent
/ Industry forecasts
/ Internet
/ Internet service providers
/ Machine learning
/ Neural networks
/ Performance evaluation
/ Planning
/ Quality of service
/ Security software
/ traffic forecast
/ traffic prediction
/ Wireless networks
2024
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Multi-Step Internet Traffic Forecasting Models with Variable Forecast Horizons for Proactive Network Management
Journal Article
Multi-Step Internet Traffic Forecasting Models with Variable Forecast Horizons for Proactive Network Management
2024
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Overview
The ISP (Internet Service Provider) industry relies heavily on internet traffic forecasting (ITF) for long-term business strategy planning and proactive network management. Effective ITF frameworks are necessary to manage these networks and prevent network congestion and over-provisioning. This study introduces an ITF model designed for proactive network management. It innovatively combines outlier detection and mitigation techniques with advanced gradient descent and boosting algorithms, including Gradient Boosting Regressor (GBR), Extreme Gradient Boosting (XGB), Light Gradient Boosting Machine (LGB), CatBoost Regressor (CBR), and Stochastic Gradient Descent (SGD). In contrast to traditional methods that rely on synthetic datasets, our model addresses the problems caused by real aberrant ISP traffic data. We evaluated our model across varying forecast horizons—six, nine, and twelve steps—demonstrating its adaptability and superior predictive accuracy compared to traditional forecasting models. The integration of the outlier detection and mitigation module significantly enhances the model’s performance, ensuring robust and accurate predictions even in the presence of data volatility and anomalies. To guarantee that our suggested model works in real-world situations, our research is based on an extensive experimental setup that uses real internet traffic monitoring from high-speed ISP networks.
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