Previous studies have shown that human movement is predictable to a certain extent at different geographic scales. Existing prediction techniques exploit only the past history of the person taken into consideration as input of the predictors. In this paper, we show that by means of multivariate nonlinear time series prediction techniques it is possible to increase the forecasting accuracy by considering movements of friends, people, or more in general entities, with correlated mobility patterns (i.e., characterised by high mutual information) as inputs. Finally, we evaluate the proposed techniques on the Nokia Mobile Data Challenge and Cabspotting datasets.
翻译:以往的研究显示,在不同的地理尺度上,人类的移动在某种程度上是可以预测的,现有的预测技术仅利用作为预测者投入的人的过去历史。在本文中,我们表明,通过多变的非线性时间序列预测技术,可以通过考虑朋友、人或更一般的实体的流动,提高预测准确性,将相关流动模式(即以高水平的相互信息为特征)作为投入。最后,我们评估了拟议的Nokia移动数据挑战和计程图数据集技术。