Discovering human routines from cell phone data with topic models

K. Farrahi, D. Gática-Pérez
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引用次数: 49

Abstract

We present a framework to automatically discover people's routines from information extracted by cell phones. The framework is built from a probabilistic topic model learned on novel bag type representations of activity-related cues (location, proximity and their temporal variations over a day) of peoples' daily routines. Using real-life data from the Reality Mining dataset, covering 68 000+ hours of human activities, we can successfully discover location-driven (from cell tower connections) and proximity-driven (from Bluetooth information) routines in an unsupervised manner. The resulting topics meaningfully characterize some of the underlying co-occurrence structure of the activities in the dataset, including ldquogoing to work early/laterdquo, ldquobeing home all dayrdquo, ldquoworking constantlyrdquo, ldquoworking sporadicallyrdquo and ldquomeeting at lunch timerdquo.
使用主题模型从手机数据中发现人类例程
我们提出了一个从手机提取的信息中自动发现人们日常活动的框架。该框架基于一个概率主题模型,该模型学习了人们日常生活中与活动相关的线索(位置、距离及其在一天内的时间变化)的新颖袋子类型表示。使用来自现实挖掘数据集的真实数据,涵盖68000多个小时的人类活动,我们可以以无监督的方式成功地发现位置驱动(来自蜂窝塔连接)和邻近驱动(来自蓝牙信息)的例程。由此产生的主题有意义的描述一些潜在的同现的活动数据集的结构,包括ldquogoing早期工作/ laterdquo, ldquobeing家里dayrdquo, ldquoworking constantlyrdquo, ldquoworking sporadicallyrdquo timerdquo和ldquomeeting午餐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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