On the Predictability of a User's Next Check-in Using Data from Different Social Networks

D. Teixeira, M. Alvim, J. Almeida
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引用次数: 4

Abstract

Predicting a person's whereabouts is important in several scenarios. However, it is hard to obtain data that reliably reflects users' mobility patterns. This difficulty has led researchers to use social media data as a proxy to understand and predict human mobility. It has been shown, however, that such data is inherently biased and error-prone, and that such drawbacks may produce sub-par mobility prediction models. In a more narrow context, researchers have used social media data to predict users' check-in patterns. A common approach to alleviate the biases in social media data is to use more than one data source. We here show, however, that the use of data from different social networks does not necessarily increase the predictability of a person next check-in. Our experiments indicate that this result is due to how and where people use different social networks, and that user behavioral characteristics play an important role on the predictability of the next check-in.
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基于不同社交网络数据的用户下一次签到的可预测性
在一些情况下,预测一个人的行踪是很重要的。然而,很难获得可靠地反映用户移动模式的数据。这一困难导致研究人员使用社交媒体数据作为代理来理解和预测人类的流动性。然而,已经表明,这样的数据本身是有偏见的,容易出错,并且这样的缺点可能会产生低于标准的迁移率预测模型。在更狭窄的背景下,研究人员使用社交媒体数据来预测用户的签到模式。缓解社交媒体数据偏差的一种常见方法是使用多个数据源。然而,我们在这里表明,使用来自不同社交网络的数据并不一定会增加一个人下一次签到的可预测性。我们的实验表明,这一结果是由于人们使用不同的社交网络的方式和地点,用户的行为特征对下一次签到的可预测性起着重要作用。
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