MobDatU:基于异构数据的人类流动性预测新模型

L. M. Silveira, J. Almeida, H. T. Marques-Neto, A. Ziviani
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引用次数: 3

摘要

先前的几个流动性模型旨在描述或预测特定时期内特定区域的人类行为。然而,这些模型中的大多数都是使用来自单一来源的数据进行评估的,例如来自移动呼叫的数据或从Web应用程序获得的GPS数据。因此,这些模型在使用不同类型的数据时的有效性仍然未知。本文提出了一种新的预测人类移动性的模型,称为MobDatU,该模型旨在使用来自移动呼叫的数据和来自地理参考应用程序的数据(以孤立或组合的方式)。MobDatU以及两个最先进的模型,即SMOOTH和Leap Graph,在考虑单数据源和多数据源的各种场景时进行了评估。实验表明,在所有场景中,MobDatU总是产生优于或至少与最佳基线相当的结果,而不像以前的模型,其性能非常依赖于所使用的特定类型的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MobDatU: A New Model for Human Mobility Prediction Based on Heterogeneous Data
Several previous mobility models aim at describing or predicting human behavior in a particular region during a certain period of time. Nevertheless, most of those models have been evaluated using data from a single source, such as data from mobile calls or GPS data obtained from Web applications. Thus, the effectiveness of such models when using different types of data remains unknown. This paper proposes a new model to predict human mobility, called MobDatU, which was designed to use data from mobile calls and data from georeferenced applications (in an isolated or combined way). MobDatU as well as two state-of-the-art models, namely SMOOTH and Leap Graph, are evaluated considering various scenarios with single data source and multiple data sources. The experiments indicate that MobDatU always produces results that are better than or at least comparable to the best baseline in all scenarios, unlike the previous models whose performance is very dependent on the particular type of data used.
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