...
首页> 外文期刊>EPJ Data Science >An alternative approach to the limits of predictability in human mobility
【24h】

An alternative approach to the limits of predictability in human mobility

机译:一种替代人类流动性预测性限制的替代方法

获取原文
           

摘要

Next place prediction algorithms are invaluable tools, capable of increasing the efficiency of a wide variety of tasks, ranging from reducing the spreading of diseases to better resource management in areas such as urban planning. In this work we estimate upper and lower limits on the predictability of human mobility to help assess the performance of competing algorithms. We do this using GPS traces from 604 individuals participating in a multi year long experiment, The Copenhagen Networks study. Earlier works, focusing on the prediction of a participant’s whereabouts in the next time bin, have found very high upper limits (({>}90%)). We show that these upper limits are highly dependent on the choice of a spatiotemporal scales and mostly reflect stationarity, i.e. the fact that people tend to not move during small changes in time. This leads us to propose an alternative approach, which aims to predict the next location, rather than the location in the next bin. Our approach is independent of the temporal scale and introduces a natural length scale. By removing the effects of stationarity we show that the predictability of the next location is significantly lower (71%) than the predictability of the location in the next bin.
机译:下一个地方预测算法是宝贵的工具,能够提高各种任务的效率,从降低疾病的扩散到城市规划等领域的更好资源管理。在这项工作中,我们估计对人类移动性可预测性的上下限制,以帮助评估竞争算法的性能。我们使用GPS痕迹从604个人参与多年的长期实验,哥本哈根网络研究。早些时候的作品,专注于在下次垃圾箱中预测参与者的下落,发现了非常高的上限(({>} 90 %))。我们表明,这些上限高度依赖于时空鳞片的选择,并且大多数反映了契约,即人们在较小的时间变化期间倾向于不会移动的事实。这使我们提出了一种替代方法,该方法旨在预测下一个位置,而不是下一个垃圾箱中的位置。我们的方法与时间尺度无关,并引入自然长度。通过去除实质性的效果,我们表明下一个位置的可预测性明显较低(71%),而不是下一个箱中的位置的可预测性。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号