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Using Data Mining Algorithms for Developing a Model for Intrusion Detection System (IDS)

机译:使用数据挖掘算法开发入侵检测系统(IDS)模型

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A common problem shared by current IDS is the high false positives and low detection rate. An unsupervised machine learning using k-means was used to propose a model for Intrusion Detection System (IDS) with higher efficiency rate and low false positives and false negatives. The NSL-KD data set was used which consisted of 25,192 entries with 22 different types of data. Results of the study using 11, 22, 44, 66 and 88 clusters, showed an efficiency rate of 70.75%, 81.61%, 65.40%, 61.30% and 55.43% respectively; false positive rates of 0.74%, 4.03%, 15.55%, 21.47% and 31.91% respectively; and false negative rates of 99.82%, 98.14%, 97.76%, 96.32% and 95.70%, respectively. Interestingly, the best results were generated when the number of clusters matches the number of data types in the data set. In the light of the findings, it is recommended that other data mining techniques be explored; a study using k-means data mining algorithm followed by signature-based approach is proposed in order to lessen the false negative rate; and a system for automatically identifying the number of clusters may be developed.
机译:当前的IDS存在的一个普遍问题是误报率高和检测率低。使用一种使用k均值的无监督机器学习来提出一种入侵检测系统(IDS)的模型,该模型具有较高的效率,并且误报率和误报率均较低。使用了NSL-KD数据集,该数据集包含25192个条目和22种不同类型的数据。使用11、22、44、66和88个集群的研究结果显示,效率分别为70.75%,81.61%,65.40%,61.30%和55.43%。假阳性率分别为0.74%,4.03%,15.55%,21.47%和31.91%;和假阴性率分别为99.82%,98.14%,97.76%,96.32%和95.70%。有趣的是,当群集数与数据集中的数据类型数匹配时,将产生最佳结果。根据调查结果,建议探索其他数据挖掘技术。为了减少假阴性率,提出了一种使用k-means数据挖掘算法和基于签名的方法的研究。并且可以开发用于自动识别群集数量的系统。

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