A refined limit on the predictability of human mobility

Gavin Smith, R. Wieser, James Goulding, Duncan Barrack
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引用次数: 70

Abstract

It has been recently claimed that human movement is highly predictable. While an upper bound of 93% predictability was shown, this was based upon human movement trajectories of very high spatiotemporal granularity. Recent studies reduced this spatiotemporal granularity down to the level of GPS data, and under a similar methodology results once again suggested a high predictability upper bound (i.e. 90% when movement was quantized down to a spatial resolution approximately the size of a large building). In this work we reconsider the derivation of the upper bound to movement predictability. By considering real-world topological constraints we are able to achieve a tighter upper bound, representing a more refined limit to the predictability of human movement. Our results show that this upper bound is between 11-24% less than previously claimed at a spatial resolution of approx. 100m×100m, with a greater improvement for finer spatial resolutions. This indicates that human mobility is potentially less predictable than previously thought. We provide an in-depth examination of how varying the spatial and temporal quantization affects predictability, and consider the impact of corresponding limits using a large set of real-world GPS traces. Particularly at fine-grained spatial quantizations, where a significant number of practical applications lie, these new (lower) upper limits raise serious questions about the use of location information alone for prediction, contributing more evidence that such prediction must integrate external variables.
对人类活动可预测性的精确限制
最近有人声称,人类的运动是高度可预测的。虽然可预测性的上限为93%,但这是基于非常高的时空粒度的人类运动轨迹。最近的研究将这种时空粒度降低到GPS数据的水平,并且在类似的方法下,结果再次表明了高可预测性的上限(即当运动量化到大约一个大型建筑物大小的空间分辨率时为90%)。在这项工作中,我们重新考虑了运动可预测性上界的推导。通过考虑现实世界的拓扑约束,我们能够获得更严格的上限,代表了对人类运动可预测性的更精细的限制。我们的研究结果表明,这个上限比以前声称的在大约的空间分辨率下低11-24%。100m×100m,对于更精细的空间分辨率有更大的改进。这表明人类的流动性可能比以前认为的更难以预测。我们提供了一个深入的研究如何变化的空间和时间量化影响可预测性,并考虑使用大量的现实世界的GPS轨迹的相应限制的影响。特别是在有大量实际应用的细粒度空间量化中,这些新的(下)上限提出了关于仅使用位置信息进行预测的严重问题,提供了更多证据表明这种预测必须整合外部变量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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