Learning Behavioral Representations of Human Mobility

M. Damiani, A. Acquaviva, F. Hachem, M. Rossini
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引用次数: 5

Abstract

In this paper, we investigate the suitability of state-of-the-art representation learning methods to the analysis of behavioral similarity of moving individuals, based on CDR trajectories. The core of the contribution is a novel methodological framework, mob2vec, centered on the combined use of a recent symbolic trajectory segmentation method for the removal of noise, a novel trajectory generalization method incorporating behavioral information, and an unsupervised technique for the learning of vector representations from sequential data. mob2vec is the result of an empirical study conducted on real CDR data through an extensive experimentation. As a result, it is shown that mob2vec generates vector representations of CDR trajectories in low dimensional spaces which preserve the similarity of the mobility behavior of individuals.
学习人类移动性的行为表征
在本文中,我们研究了基于CDR轨迹的最先进的表征学习方法对移动个体行为相似性分析的适用性。贡献的核心是一个新的方法框架,mob2vec,集中于结合使用最近的符号轨迹分割方法来去除噪声,一种新的包含行为信息的轨迹泛化方法,以及一种用于从序列数据中学习向量表示的无监督技术。mob2vec是通过大量实验对真实CDR数据进行实证研究的结果。结果表明,mob2vec在低维空间中生成CDR轨迹的向量表示,保持了个体移动行为的相似性。
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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