A Comparative Analysis of IoT based Network Anomaly Detection and Prediction Using Vector Autoregressive Models

Ok-Hue Cho
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Abstract

This research provides a comparative analysis of the use of Vector Autoregressive models for network anomaly detection and prediction. It starts by giving a brief overview of the models and going over the two versions that are available for network anomaly detection. Ultimately, the study offers an empirical assessment of the two types of models, just considering how well they detect and forecast anomalies overall. The results show that the unmarried-node anomaly detection performance of the model is superior. Simultaneously, the Adaptive Learning version is particularly effective in identifying anomalies among a few nodes. The fundamental reasons for the differences in the two fashions' overall performance are also examined in this research. This work provides a comparative analysis of two widely utilized algorithmic approaches: vector autoregressive models and community anomaly detection and prediction. Each method's effectiveness is assessed using two different network datasets: one based on real-world global measurements of latency and mobility ranges, and the other focused on a fictional community. The study also examines the trade-offs between employing the versus other modern and classic techniques, Markov Chain Monte Carlo, and Artificial Neural Networks for network anomaly detection. Finally, it provides an overview of the advantages and disadvantages of each technique as well as suggestions for improving performance.
使用矢量自回归模型对基于物联网的网络异常现象检测和预测进行比较分析
本研究对使用矢量自回归模型进行网络异常检测和预测进行了比较分析。研究首先简要概述了模型,并介绍了用于网络异常检测的两个版本。最后,研究对这两种模型进行了实证评估,只考虑了它们检测和预测异常的整体效果。结果显示,该模型的未婚节点异常检测性能更优。同时,自适应学习版本在识别少数节点的异常情况方面尤为有效。本研究还探讨了两种模式总体性能差异的根本原因。本研究对两种广泛使用的算法方法进行了比较分析:向量自回归模型和社区异常检测与预测。每种方法的有效性都通过两个不同的网络数据集进行了评估:一个数据集基于真实世界中对延迟和移动范围的全球测量,另一个数据集则侧重于一个虚构的社区。研究还探讨了在网络异常检测中采用马尔可夫链蒙特卡洛和人工神经网络与其他现代和经典技术之间的权衡。最后,它概述了每种技术的优缺点,并提出了提高性能的建议。
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