IBM Cloud Pak for Security上通用数据洞察工具的用户分析

Farzaneh Shoeleh, Masoud Erfani, Saeed Shafiee Hasanabadi, Duc-Phong Le, Arash Habibi Lashkari, Adam Frank, A. Ghorbani
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引用次数: 0

摘要

用户分析是最重要的研究课题之一,组织努力建立用户活动的概况,以检测或预测潜在的异常行为。以往的研究主要集中在通过社交媒体检测和识别静态活动。缺乏基于流设置的通用分析,以持续监控用户活动。本文提出了一个基于uddi平台的用户分析框架来解决这个问题。我们的框架包括三个主要步骤:模拟用户活动的现实场景,提出和提取潜在特征,以及在模拟数据集上应用机器学习模型。实验结果表明,所选择的机器学习算法可以正确识别大多数异常行为。在所有算法中,LODA、RRCF和LSCP算法的性能是最高的。在考虑小数据集和速度时,基于树的算法(如Isolation Forest)获得了最好的结果。此外,机器学习算法的性能证明了我们的模拟数据集的高质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
User Profiling on Universal Data Insights tool on IBM Cloud Pak for Security
User profiling is one of the most important research topics where organizations endeavour to establish profiles of user activities to detect or predict potential abnormal behaviours. Previous researches have mainly focused on detecting and identifying static activities through social media. A universal analysis based on streaming settings to monitor user activities continuously is missing. This paper proposes a framework for user profiling based on UDI platforms to address this issue. Our framework consists of three main steps: simulating realistic scenarios for user activities, proposing and extracting potential features, and applying machine learning models on simulated datasets. Our experimental results show that selected machine learning algorithms can distinguish most abnormal behaviours correctly. LODA, RRCF, and LSCP algorithms achieve the highest performance among all algorithms. Tree-based algorithms such as Isolation Forest acquire the best results when considering small datasets and speed. Furthermore, machine learning algorithms’ performance demonstrates the high quality of our simulated datasets.
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