Forecast techniques for predicting increase or decrease of attacks using Bayesian inference

C. Ishida, Y. Arakawa, I. Sasase, K. Takemori
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引用次数: 29

Abstract

The analysis techniques of intrusion detection system (IDS) events are actively researched, since it is important to understand attack trends and devise countermeasures against incidents. To aim at a quick response in security operation, it is necessary to forecast a fluctuation of attacks. However, there is no approach for predicting the fluctuation of attacks, since the fluctuation of attacks seems to be random. In this paper, we propose forecast techniques for predicting increase or decrease of the attacks by using the Bayesian inference for calculating the conditional probability based on past-observed event counts. We consider two algorithms by focusing on an attack cycle and a fluctuation range of the event counts. We implement a forecasting system and evaluate it with real IDS events. As a result, our proposed technique can forecast increase or decrease of the event counts, and be effective to various types of attacks.
使用贝叶斯推理预测攻击增加或减少的预测技术
入侵检测系统(IDS)事件分析技术对于了解攻击趋势和制定事件对策具有重要意义,因此受到了广泛的研究。为了在安全行动中快速做出反应,有必要对攻击的波动进行预测。然而,没有办法预测攻击的波动,因为攻击的波动似乎是随机的。在本文中,我们提出了一种预测技术,通过使用贝叶斯推理来计算基于过去观察到的事件计数的条件概率来预测攻击的增加或减少。我们通过关注攻击周期和事件计数的波动范围来考虑两种算法。我们实现了一个预测系统,并用真实的IDS事件对其进行了评价。因此,我们提出的技术可以预测事件数量的增加或减少,并对各种类型的攻击有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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