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Sequencegram: n-gram modeling of system calls for program based anomaly detection

机译:序列图:系统调用的n-gram建模,用于基于程序的异常检测

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Our contribution in this paper is two fold. First we provide preliminary investigation results establishing program based anomaly detection is effective if short system call sequences are modeled along with their occurrence frequency. Second as a consequence of this, built normal program model can tolerate some level of contamination in the training dataset. We describe an experimental system Sequencegram, designed to validate the contributions. Sequencegram model short sequences of system calls in the form of n-grams and store in a tree (for the space efficiency) called as n-gram-tree. A score known as anomaly score is associated with every short sequence (based on its occurrence frequency) which represents the probability of short sequence being anomalous. As it is generally assumed that, there is a skewed distribution of normal and abnormal sequences, more frequently occurring sequences are given lower anomaly score and vice versa. Individual n-gram anomaly score contribute to the anomaly score of a program trace.
机译:我们在本文中的贡献有两个方面。首先,我们提供了初步的调查结果,如果对短系统调用序列及其出现频率进行建模,则基于程序的异常检测是有效的。其次,其结果是,构建的正常程序模型可以容忍训练数据集中的一定程度的污染。我们描述了一个实验系统Sequencegram,旨在验证贡献。序列图以n-gram的形式对系统调用的短序列进行建模,并存储在称为n-gram-tree的树中(为了提高空间效率)。每个短序列(基于其出现频率)都与一个异常分数相关联,该分数表示短序列出现异常的可能性。通常认为,正常和异常序列存在偏斜分布,出现频率更高的序列具有较低的异常评分,反之亦然。单个n-gram异常得分会导致程序痕迹的异常得分。

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