实现智能手机用户语境行为的自动提取

A. Jaffal, B. L. Grand
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引用次数: 1

摘要

本文提出了一种从智能手机用户与设备交互过程中收集的数字痕迹中自动提取其上下文行为的新方法。我们的目标是了解用户的上下文(例如,位置,时间,环境等)对他们在智能手机上运行的应用程序的影响。我们提出了一种方法来分析数字痕迹,并自动识别表征用户行为的重要信息。在早期的工作中,我们使用形式概念分析和伽罗瓦格从异构和复杂的上下文数据中提取相关知识;然而,获得的伽罗瓦格的解释是手工进行的。在本文中,我们的目标是通过提供原始度量来自动化这个解释过程。因此,我们的方法返回相关信息,而不需要任何专业知识的数据分析。我们用从志愿者用户那里收集的真实数据来说明我们的贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards an automatic extraction of smartphone users' contextual behaviors
This paper presents a new method for automatically extracting smartphone users' contextual behaviors from the digital traces collected during their interactions with their devices. Our goal is in particular to understand the impact of users' context (e.g., location, time, environment, etc.) on the applications they run on their smartphones. We propose a methodology to analyze digital traces and to automatically identify the significant information that characterizes users' behavlors. In earlier work, we have used Formal Concept Analysis and Galois lattices to extract relevant knowledge from heterogeneous and complex contextual data; however, the interpretation of the obtained Galois lattices was performed manually. In this article, we aim at automating this interpretation process, through the provision of original metrics. Therefore our methodology returns relevant information without requiring any expertise in data analysis. We illustrate our contribution on real data collected from volunteer users.
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