Malicious Flows Generator Based on Data Balanced Algorithm

I. Liu, Cheng-En Hsieh, Weixing Lin, Chu-Fen Li, Jung-Shian Li
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Abstract

As Internet technology gradually matures, the network structure becomes more complex. Therefore, the attack methods of malicious attackers are more diverse and change faster. Fortunately, due to the substantial increase in computer computing power, machine learning is valued and widely used in various fields. It has also been applied to intrusion detection systems. This study found that due to the imperfect data ratio of the unbalanced flow dataset, the model will be overfitting and the misjudgment rate will increase. In response to this problem, this research proposes to use the Cuckoo system to induce malicious samples to generate malicious traffic, to solve the data proportion defect of the unbalanced traffic dataset.
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基于数据均衡算法的恶意流量生成器
随着互联网技术的逐渐成熟,网络结构也越来越复杂。因此,恶意攻击者的攻击方式更加多样,变化也更快。幸运的是,由于计算机计算能力的大幅提高,机器学习被重视并广泛应用于各个领域。它也被应用于入侵检测系统。本研究发现,由于不平衡流量数据集的数据比例不完善,模型会出现过拟合,误判率会增加。针对这一问题,本研究提出利用布谷鸟系统诱导恶意样本生成恶意流量,解决不平衡流量数据集的数据比例缺陷。
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