为不断变化的用户行为建模

J. A. Iglesias, P. Angelov, Agapito Ledezma, A. Sanchis
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引用次数: 15

摘要

对计算机用户的了解对于帮助他们、预测他们未来的行为或发现假面者是非常有益的。本文提出了一种自动生成和识别计算机用户行为特征的新方法。在这种情况下,计算机用户行为被表示为他在工作期间输入的命令序列。该序列被转换成相关命令子序列的分布,以便找出定义其行为的概要文件。此外,由于用户配置文件不一定是固定的,而是不断发展/变化的,因此我们提出了一种不断发展的方法,使用不断发展的系统方法来保持已创建的配置文件的最新状态。在本文中,我们将进化分类器与基于尝试的用户分析相结合,以获得一个强大的在线自学习方案。我们还进一步开发了使用余弦距离的数据点成为集群中心的潜力的递归公式,该公式在附录中提供。本文提出的新方法可以适用于任何动态/不断发展的用户行为建模问题,其中它可以表示为一系列动作和事件。它已在几个实际数据流上进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling evolving user behaviours
Knowledge about computer users is very beneficial for assisting them, predicting their future actions or detecting masqueraders. In this paper, a new approach for creating and recognizing automatically the behaviour profile of a computer user is presented. In this case, a computer user behaviour is represented as the sequence of the commands (s)he types during her/his work. This sequence is transformed into a distribution of relevant subsequences of commands in order to find out a profile that defines its behaviour. Also, because of a user profile is not necessarily fixed but rather it evolves/changes, we propose an evolving method to keep up to date the created profiles using an Evolving Systems approach. In this paper we combine the evolving classifier with a trie-based user profiling to obtain a powerful self-learning on-line scheme. We also develop further the recursive formula of the potential of a data point to become a cluster centre using cosine distance which is provided in the Appendix. The novel approach proposed in this paper can be applicable to any problem of dynamic/evolving user behaviour modelling where it can be represented as a sequence of actions and events. It has been evaluated on several real data streams.
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