通过机器学习对skype用户进行早期安全分类

A. Leontjeva, M. Goldszmidt, Yinglian Xie, Fang Yu, M. Abadi
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引用次数: 18

摘要

我们研究了基于用户及其交互信息的在线欺诈检测的可能改进。我们开发,应用,并评估我们的方法在Skype的背景下。具体来说,在Skype中,我们的目标是提供工具,识别那些躲过了一线检测系统并已活跃数月的欺诈者。我们的自动化方法是基于机器学习方法。我们依赖于数据中存在的各种特征,包括静态用户配置文件(例如,年龄),动态产品使用情况(例如,呼叫的时间序列),本地社交行为(添加/删除朋友)和全局社交特征(例如,PageRank)。我们引入了新的技术来预处理动态(时间序列)特征,并将其与社会特征融合。我们对不同类别的功能的有用性和新技术的有效性进行了全面的分析。
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Early security classification of skype users via machine learning
We investigate possible improvements in online fraud detection based on information about users and their interactions. We develop, apply, and evaluate our methods in the context of Skype. Specifically, in Skype, we aim to provide tools that identify fraudsters that have eluded the first line of detection systems and have been active for months. Our approach to automation is based on machine learning methods. We rely on a variety of features present in the data, including static user profiles (e.g., age), dynamic product usage (e.g., time series of calls), local social behavior (addition/deletion of friends), and global social features (e.g., PageRank). We introduce new techniques for pre-processing the dynamic (time series) features and fusing them with social features. We provide a thorough analysis of the usefulness of the different categories of features and of the effectiveness of our new techniques.
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