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Characterization of Behavioral Patterns Exploiting Description of Geographical Areas

机译:利用地理区域描述的行为模式表征

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The enormous amount of recently available mobile phone data is providing unprecedented direct measurements of human behavior. Early recognition and prediction of behavioral patterns are of great importance in many societal applications like urban planning, transportation optimization, and health-care. Understanding the relationships between human behaviors and location's context is an emerging interest for understanding human-environmental dynamics. Growing availability of Web 2.0, i.e. the increasing amount of websites with mainly user created content and social platforms opens up an opportunity to study such location's contexts. This paper investigates relationships existing between human behavior and location context, by analyzing log mobile phone data records. First an advanced approach to categorize areas in a city based on the presence and distribution of categories of human activity (e.g., eating, working, and shopping) found across the areas, is proposed. The proposed classification is then evaluated through its comparison with the patterns of temporal variation of mobile phone activity and applying machine learning techniques to predict a timeline type of communication activity in a given location based on the knowledge of the obtained category vs. land-use type of the locations areas. The proposed classification turns out to be more consistent with the temporal variation of human communication activity, being a better predictor for those compared to the official land use classification.
机译:最近可用的大量移动电话数据正在提供对人类行为的空前直接测量。行为模式的早期识别和预测在许多社会应用中(例如城市规划,交通优化和医疗保健)非常重要。理解人类行为与位置环境之间的关系是理解人类环境动态的一种新兴兴趣。 Web 2.0的可用性不断提高,即主要由用户创建内容和社交平台的网站数量不断增加,这为研究此类位置的上下文提供了机会。本文通过分析日志移动电话数据记录来研究人类行为与位置上下文之间存在的关系。首先,提出了一种高级方法,该方法基于在整个地区发现的人类活动类别(例如饮食,工作和购物)的存在和分布来对城市中的地区进行分类。然后,通过与移动电话活动的时间变化模式进行比较,评估拟议的分类,并基于获得的类别与土地利用类型的知识,应用机器学习技术预测给定位置的通信活动的时间轴类型位置区域。所提出的分类结果与人类交流活动的时间变化更加一致,与官方土地用途分类相比,它们是更好的预测指标。

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