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Active authentication using scrolling behaviors

机译:使用滚动行为的主动身份验证

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摘要

This paper addresses active authentication using scrolling behaviors for biometrics and assesses different classification and clustering methods that leverage those traits. The dataset used contained event-driven temporal data captured through monitoring users' reading habits. The derived feature set is mainly composed of users' scrolling events and their derivatives (changes) and 5-gram sequencing of scrolling events to increase the number of feature extracted and their context. Classification performance in terms of both accuracy and Area under the Curve (AUC) for Receiver Operating Characteristic (ROC) curve is first reported using several classification methods including Random Forests (RF), RF with SMOTE (for unbalanced dataset) and AdaBoost with Decision Stump and ADTree. The best performance was obtained, however, using k-means clustering with two methods used to authenticate users: simple ranking and profile standard error filtering, with the latter achieving a success rate of 83.5%. Our use of k-means represents a novel non-intrusive approach of active and continuous re-authentication to counter insider-threat. Our main contribution comes from the features considered and their coupling to k-means to create a novel state-of-the art active user re-authentication method.
机译:本文针对使用生物特征的滚动行为解决了主动身份验证问题,并评估了利用这些特征的不同分类和聚类方法。使用的数据集包含通过监视用户的阅读习惯而捕获的事件驱动的时间数据。派生的特征集主要由用户的滚动事件及其派生(更改)和滚动事件的5克序列组成,以增加提取的特征及其上下文的数量。首先使用几种分类方法报告接收器工作特性(ROC)曲线的精度和曲线下面积(AUC)方面的分类性能,包括随机森林(RF),具有SMOTE的RF(用于不平衡数据集)和具有决策树桩的AdaBoost和ADTree。但是,使用k-means聚类和两种用于验证用户的方法获得了最佳性能:简单排名和配置文件标准错误过滤,后者的成功率为83.5%。我们使用k均值表示主动和连续重新认证以对抗内部威胁的一种新颖的非侵入性方法。我们的主要贡献来自于所考虑的功能及其与k均值的耦合,从而创建了一种新颖的,最新的主动用户重新认证方法。

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