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STLP-GSM: a method to predict future locations of individuals based on geotagged social media data

机译:STLP-GSM:一种基于地理位置的社交媒体数据预测个人未来位置的方法

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An increasing number of social media users are becoming used to disseminate activities through geotagged posts. The massive available geotagged posts enable collections of users' footprints over time and offer effective opportunities for mobility prediction. Using geotagged posts for spatio-temporal prediction of future location, however, is challenging. Previous studies either focus on next-place prediction or rely on dense data sources such as GPS data. Introduced in this article is a novel method for future location prediction of individuals based on geotagged social media data. This method employs the hierarchical density-based clustering algorithm with adaptive parameter selection to identify the regions frequently visited by a social media user. A multi-feature weighted Bayesian model is then developed to forecast users' spatio-temporal locations by combining multiple factors affecting human mobility patterns. Further, an updating strategy is designed to efficiently adjust, over time, the proposed model to the dynamics in users' mobility patterns. Based on two real-life datasets, the proposed approach outperforms a state-of-the-art method in prediction accuracy by up to 5.34% and 3.30%. Tests show prediction reliability is high with quality predictions, but low in the identification of erroneous locations.
机译:越来越多的社交媒体用户正在努力通过地理标记的帖子传播活动。大量可用的地理标记柱使用户的占用占地面积随时间提供了有效的移动预测机会。然而,使用GeoTagged Posts进行未来位置的时空预测,是具有挑战性的。以前的研究要么专注于下一个地方预测或依赖于密集的数据源,例如GPS数据。本文介绍是一种基于地理媒体社交媒体数据的个人的未来位置预测的新方法。该方法采用具有自适应参数选择的分层密度的聚类算法,以识别由社交媒体用户经常访问的区域。然后通过组合影响人类移动模式的多个因素来开发多特征加权贝叶斯模型来预测用户的时空位置。此外,更新策略旨在随着时间的推移为用户移动模式的动态提供了有效调整模型。基于两个现实生活数据集,所提出的方法以预测精度优于最高元化的方法,高达5.34%和3.30%。测试显示预测可靠性高,质量预测高,但在识别错误​​位置时低。

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