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Boosting algorithms for network intrusion detection: A comparative evaluation of Real AdaBoost, Gentle AdaBoost and Modest AdaBoost

机译:网络入侵检测的促进算法:真正的Adaboost,温和Adaboost和适度Adaboost的比较评价

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摘要

Computer networks have been experienced ever-increasing growth since they play a critical role in different aspects of human life. Regarding the vulnerabilities of computer networks, they should be monitored regularly to detect intrusions and attacks by using high-performance Intrusion Detection Systems (IDSs). IDSs try to differentiate between normal and abnormal behaviors to recognize intrusions. Due to the complex behavior of malicious entities, it is crucially important to adopt machine learning methods for intrusion detection with a fine performance and low time complexity. Boosting approach is considered as a way to deal with this challenge. In this paper, we prepare a clear summary of the latest progress in the context of intrusion detection methods, present a technical background on boosting, and demonstrate the ability of the three well-known boosting algorithms (Real Adaboost, Gentle Adaboost, and Modest Adaboost) as IDSs by using five IDS public benchmark datasets. The results show that the Modest AdaBoost has a higher error rate compared to Gentle and Real AdaBoost in IDSs. Besides, in the case of IDSs, Gentle and Real AdaBoost show the same performance as they have about 70% lower error rates compared to Modest Adaboost, however, Modest AdaBoost is about 7% faster than them. In addition, as IDSs need to retrain the model frequently, the results show that Modest AdaBoost has a much lower performance than Gentle and Real AdaBoost in case of error rate stability.
机译:计算机网络经历了不断增长的增长,因为它们在人类生活的不同方面发挥着关键作用。关于计算机网络的漏洞,应定期监控它们以使用高性能入侵检测系统(IDS)来检测入侵和攻击。 IDSS尝试区分正常和异常行为来识别入侵。由于恶意实体的复杂行为,采用具有精细性能和低时间复杂性的机器学习方法,采用机器学习方法至关重要。促进方法被视为处理这一挑战的一种方式。在本文中,我们在入侵检测方法的背景下准备清晰的最新进展摘要,提高了升高的技术背景,并展示了三个着名的促进算法(真正的Adaboost,Varkaboost和适度的Adaboost的能力)通过使用五个IDS公共基准数据集作为IDS。结果表明,与IDS中的温和和真正的Adaboost相比,适度的Adaboost具有更高的错误率。此外,在IDS的情况下,温和真正的Adaboost显示出与较大的Adaboost相比的误差率相同的性能,但是,适度的Adaboost比它们快约7%。此外,随着IDS需要经常重新培训模型,结果表明,在错误率稳定性的情况下,谦逊的Adaboost在温和和真正的Adaboost中具有更低的性能。

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