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Research and Improvement of Intrusion Detection Based on Isolated Forest and FP-Growth

机译:基于孤立林和FP生长的入侵检测研究与改进

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The current anomaly intrusion detection system has shortcomings such as low detection rate, high false alarm rate and poor performance in processing large amounts of data. In response to the above problems, some improvement measures are put forward for the isolated forest algorithm and the FP-Growth algorithm. The improved isolated forest algorithm considers the correlation between dimensions and makes the dimension division more reasonable for abnormal analysis. The improved FP growth algorithm reduces the time of processing a large amount of data, used for correlation analysis of abnormal data. Applying the above two improved algorithms to intrusion detection can further improve the anomaly detection performance. The results show that the false alarm rate of the joint improved algorithm is relatively reduced by 25%, and the overall detection rate is 96.24%.
机译:当前的异常入侵检测系统具有缺点,例如低检测率,高误报率和处理大量数据的性能不佳。响应于上述问题,对孤立的森林算法和FP-Grangic算法提出了一些改进措施。改进的孤立的森林算法考虑了尺寸之间的相关性,使维度划分更合理地进行异常分析。改进的FP增长算法减少了处理大量数据的时间,用于异常数据的相关性分析。将上述两种改进的算法应用于入侵检测可以进一步提高异常检测性能。结果表明,关节改善算法的误报率相对减少了25%,总检测率为96.24%。

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