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Enchanced multiclass intrusion detection using supervised learning methods

机译:使用受监督学习方法增强多种多组入侵检测

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Multi-class Intrusion Detection System has always been a viable method to accomplish higher security in recognizing harmful exercises for past recent years. Abnormality identification is an interruption location framework. Current inconsistency discovery is regularly connected with high bogus alert rates and just moderate precision and location rates since it can't distinguish a wide range of assaults accurately. An examination is completed to assess the presence of the diverse AI calculations utilizing the KDD-99 Cup dataset. Outcome showed which approach has been performing better in respect of precision, location rate.
机译:多级入侵检测系统一直是一种可行的方法,可以实现更高的安全性,以识别过去几年的有害锻炼。 异常识别是中断位置框架。 目前的不一致发现经常与高虚假警报率相连,只是适度的精度和位置速率,因为它无法准确地区分各种攻击。 完成考试以评估利用KDD-99杯数据集的不同AI计算的存在。 结果表明,在精度,位置率方面表现出哪种方法更好。

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