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Methods for Increasing Creditability of Anomaly Detection System

机译:增加异常检测系统信用性的方法

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Based on Bayes' theorem we point out that the false positive rate must be lower than the intrusion base rate in order to make the Alarm Credibility Probability of the intrusion detection system exceed 50%. We present the methods that have been used in our developing intrusion detection system AIIDS (artificial immune intrusion detection systems) to increase the creditability of anomaly detection system. These methods include increasing the regularities of the system call trace by use of Hidden Markov Model (HMM), making every antibody or detector has finite lifetime, offering the detector a co-stimulate signal to illustrate whether there is damage in the system according to the integrity, confidentiality, or availability of the system resource.
机译:基于贝叶斯的定理,我们指出,假阳性率必须低于入侵基础率,以使入侵检测系统的报警可信度概率超过50%。我们介绍了我们开发的入侵检测系统AIIDS(人工免疫入侵检测系统)中使用的方法,以提高异常检测系统的可信度。这些方法包括通过使用隐马尔可夫模型(HMM)来增加系统呼叫轨迹的规律,使每个抗体或探测器具有有限寿命,提供探测器A共刺激信号,以说明根据系统是否存在损坏。完整性,机密性或系统资源的可用性。

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