The increasing popularity of smart mobile phones and their powerful sensing capabilities have enabled the collection of rich contextual information and mobile phone usage records through the device logs. This paper formulates the problem of mining behavioral association rules of individual mobile phone users utilizing their smartphone data. Association rule learning is the most popular technique to discover rules utilizing large datasets. However, it is well-known that a large proportion of association rules generated are redundant. This redundant production makes not only the rule-set unnecessarily large but also makes the decision making process more complex and ineffective. In this paper, we propose an approach that effectively identifies the redundancy in associations and extracts a concise set of behavioral association rules that are non-redundant. The effectiveness of the proposed approach is examined by considering the real mobile phone datasets of individual users.
翻译:智能移动电话及其强大感知能力越来越受欢迎,因此能够通过设备日志收集丰富的背景信息和移动电话使用记录。本文件阐述了利用个人移动电话用户的智能手机数据挖掘行为联系规则的问题。协会规则学习是发现使用大型数据集的规则的最流行技术。然而,众所周知,产生的大量联系规则是多余的。这种冗余生产不仅使规则定得不必要大,而且使决策过程更加复杂和无效。在本文件中,我们提出一种办法,有效查明协会的冗余,并摘录一套非冗余的简明的行为联系规则。通过考虑个人用户的实际移动电话数据集,可以审查拟议办法的有效性。