Multilayer Seasonal Autoregressive Integrated Moving Average Models for Complex Network Traffic Analysis

Prathipa Ravanappan, Maragatharajan M, Rashika Tiwari, Srihari T, Lavanya K
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引用次数: 0

Abstract

The ever-increasing amount of network traffic generated by various devices and applications has made it crucial to have efficient methods for analyzing and managing network traffic. Traditional approaches, such as statistical modeling, have yet to be proven enough due to network traffic's complex nature and dynamic characteristics. Recent research has shown the effectiveness of complex network analysis techniques for understanding network traffic patterns. This paper proposes multilayer seasonal autoregressive integrated moving average models for analyzing and predicting network traffic. This approach considers the seasonal patterns and interdependencies between different layers of network traffic, allowing for a more accurate and comprehensive representation of the data. The Multilayer Seasonal Autoregressive Integrated Moving Average (MSARIMA) model consists of multiple layers, each representing a different aspect of network traffic, such as time of day, day of week, or type of traffic. Each layer is modeled separately using SARIMA, a popular time series forecasting technique. The models for different layers are combined to capture the overall behavior of network traffic. The proposed approach has several benefits over traditional statistical approaches. It can capture network traffic's complex and dynamic nature, including short-term and long-term seasonal patterns. It also allows for the detection of anomalies and the prediction of future traffic patterns with high accuracy.
用于复杂网络流量分析的多层季节自回归综合移动平均模型
各种设备和应用产生的网络流量不断增加,因此,拥有高效的网络流量分析和管理方法至关重要。由于网络流量的复杂性和动态特性,统计建模等传统方法尚未得到充分验证。最新研究表明,复杂网络分析技术在理解网络流量模式方面非常有效。本文提出了用于分析和预测网络流量的多层季节自回归综合移动平均模型。这种方法考虑了网络流量的季节性模式和不同层之间的相互依存关系,可以更准确、更全面地表示数据。多层季节性自回归综合移动平均(MSARIMA)模型由多个层组成,每个层代表网络流量的不同方面,如一天中的时间、一周中的某一天或流量类型。每一层都使用 SARIMA(一种流行的时间序列预测技术)单独建模。不同层的模型组合在一起,以捕捉网络流量的整体行为。与传统的统计方法相比,建议的方法有几个优点。它可以捕捉网络流量的复杂动态特性,包括短期和长期的季节性模式。它还可以检测异常情况,并高精度地预测未来的流量模式。
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CiteScore
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