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Internet Intrusion Detection Model Based on Fuzzy Data Mining

机译:基于模糊数据挖掘的互联网入侵检测模型

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摘要

An intrusion detection (ID) model is proposed based on the fuzzy data mining method. A major difficulty of anomaly ID is that patterns of the normal behavior change with time. In addition, an actual intrusion with a small deviation may match normal patterns. So the intrusion behavior cannot be detected by the detection system. To solve the problem, fuzzy data mining technique is utilized to extract patterns representing the normal behavior of a network. A set of fuzzy association rules mined from the network data are shown as a model of "normal behaviors". To detect anomalous behaviors, fuzzy association rules are generated from new audit data and the similarity with sets mined from "normal" data is computed. If the similarity values are lower than a threshold value, an alarm is given. Furthermore, genetic algorithms are used to adjust the fuzzy membership functions and to select an appropriate set of features.
机译:提出了一种基于模糊数据挖掘方法的入侵检测模型。异常ID的主要困难是正常行为的模式随时间变化。此外,偏差较小的实际入侵可能会与正常模式匹配。因此检测系统无法检测到入侵行为。为了解决该问题,利用模糊数据挖掘技术来提取表示网络正常行为的模式。从网络数据中提取的一组模糊关联规则显示为“正常行为”模型。为了检测异常行为,从新的审核数据中生成模糊关联规则,并计算与从“正常”数据中提取的集合的相似性。如果相似度值小于阈值,则发出警报。此外,遗传算法用于调整模糊隶属函数并选择适当的特征集。

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