云计算环境下聚类数据集的用户识别

Shallaw Mohammed Ali, G. Kecskeméti
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引用次数: 1

摘要

用户行为对云计算资源的影响是显著的。行为预测模型可以培养云用户的使用意识。这需要用提供用户信息的数据集训练预测模型。不幸的是,这些信息被排除在许多相关数据集之外。因此,在这项工作中,我们研究了通过聚类方法提取这些身份的能力。我们通过根据用户信息在其属性中的可用性对工作负载数据集进行分类来实现这一点。然后,我们将重点放在用户信息公开和非公开数据集之间的共享属性上。最后,我们评估了几种聚类方法在用户信息披露数据集上的潜力。结果表明,利用聚类方法可以提取出具有较高准确率的用户身份信息。它们还表明,最高的聚类精度主要来自表示与用户应用程序密切相关的请求组件的属性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering Datasets in Cloud Computing Environment for User Identification
Users’ behaviours show a noticeable impact on cloud computing resources. Behaviour prediction models could foster usage awareness of cloud users. This requires training prediction models with datasets that provide user information. Unfortunately, such information is excluded from many relevant datasets. Therefore, in this work, we investigate the ability of extracting these identities via clustering methods. We conduct this by categorising workload datasets according to the availability of users information in their attributes. Then, we focus our attention on shared attributes between user information disclosing and non-disclosing datasets. Eventually, we evaluated the potential of several clustering approaches on user information disclosing datasets. Our results show that users’ identifications can be extracted with relatively high accuracy using clustering. They also show that the highest clustering precision is mostly obtained from the attributes representing request components that strongly relate to the user’s application.
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