首页> 外文会议>2012 ASE/IEEE International Conference on Privacy, Security, Risk and Trust and 2012 ASE/IEEE International Conference on Social Computing. >Incremental Learning with Accuracy Prediction of Social and Individual Properties from Mobile-Phone Data
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Incremental Learning with Accuracy Prediction of Social and Individual Properties from Mobile-Phone Data

机译:通过手机数据对社交和个人属性进行准确预测的增量学习

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As truly ubiquitous wearable computers, mobile phones are quickly becoming the primary source for social, behavioral, and environmental sensing and data collection. Today's smart phones are equipped with increasingly more sensors and accessible data types that enable the collection of literally dozens of signals regarding the phone, its user, and their environment. A great deal of research effort in academia and industry is put into mining this data for higher level sense-making, such as understanding user context, inferring social networks, learning individual features, and so on. In many cases this analysis work is the result of exploratory forays and trial-and-error. Adding to the challenge, the devices themselves are limited platforms, hence data collection campaign must be carefully designed in order to collect the signals in the appropriate frequency, avoiding the exhausting the the device's limited battery and processing power. Currently however, there is no structured methodology for the design of mobile data collection and analysis initiatives. In this work we investigate the properties of learning and inference of real world data collected via mobile phones over time. In particular, we analyze how the ability to predict individual parameters and social links is incrementally enhanced with the accumulation of additional data. To do so we use the emph{Friends and Family} dataset, containing rich data signals gathered from the smart phones of 140 adult members of an MIT based young-family residential community for over a year, and is one of the most comprehensive mobile phone datasets gathered in academia to date. We develop several models for predicting social and individual properties from sensed mobile phone data over time, including detection of life-partners, ethnicity, and whether a person is a student or not. Finally, we propose a method for predicting the maximal learning accuracy possible for the learning task at hand, based on an initial set of - easurements. This has various practical implications, such as better design of mobile data collection campaigns, or evaluating of planned analysis strategies.
机译:作为真正无处不在的可穿戴计算机,移动电话正迅速成为社交,行为和环境感知与数据收集的主要来源。当今的智能手机配备了越来越多的传感器和可访问的数据类型,从而可以收集有关手机,用户及其环境的数十种信号。学术界和工业界进行了大量研究工作,以挖掘这些数据以进行更高层次的感知,例如了解用户上下文,推断社交网络,学习个性特征等等。在许多情况下,这项分析工作是探索性尝试和反复试验的结果。此外,设备本身是有限的平台,因此,必须谨慎设计数据收集活动,以便以适当的频率收集信号,从而避免耗尽设备有限的电池和处理能力,这也增加了挑战。但是,目前尚无用于设计移动数据收集和分析计划的结构化方法。在这项工作中,我们调查了随着时间的流逝,通过手机收集的现实世界数据的学习和推理特性。特别是,我们分析了如何通过附加数据的积累来逐步增强预测个人参数和社交联系的能力。为此,我们使用emph {Friends and Family}数据集,其中包含一年多以来从MIT的年轻家庭住宅社区的140位成人成员的智能手机收集的丰富数据信号,并且它是功能最全面的手机之一迄今为止在学术界收集的数据集。我们开发了几种模型,用于根据一段时间后从感测到的手机数据中预测社交和个人属性,包括检测生活伴侣,种族以及个人是否为学生。最后,我们提出了一种基于-期望的初始集合来预测当前学习任务可能的最大学习准确性的方法。这具有各种实际含义,例如更好地设计移动数据收集活动或评估计划的分析策略。

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