Life pattern clustering is essential for abstracting the groups' characteristics of daily mobility patterns and activity regularity. Based on millions of GPS records, this paper proposed a framework on the life pattern clustering which can efficiently identify the groups have similar life pattern. The proposed method can retain original features of individual life pattern data without aggregation. Metagraph-based data structure is proposed for presenting the diverse life pattern. Spatial-temporal similarity includes significant places semantics, time sequential properties and frequency are integrated into this data structure, which captures the uncertainty of an individual and the diversities between individuals. Non-negative-factorization-based method was utilized for reducing the dimension. The results show that our proposed method can effectively identify the groups have similar life pattern and takes advantages in computation efficiency and robustness comparing with the traditional method. We revealed the representative life pattern groups and analyzed the group characteristics of human life patterns during different periods and different regions. We believe our work will help in future infrastructure planning, services improvement and policies making related to urban and transportation, thus promoting a humanized and sustainable city.
翻译:根据数百万个全球定位系统记录,本文件提出了一个生命模式群集框架,可以有效地识别这些群体具有类似的生命模式;拟议方法可以保留个人生命模式数据的原始特征,而无需汇总; 提议采用基于术语的数据结构,以展示不同的生命模式; 空间-时际相似性包括大量地点的语义、时间顺序特性和频率纳入这一数据结构,该结构将反映个人的不确定性和个人之间的差异性; 采用非消极因素型方法来减少这一维度; 结果表明,我们拟议方法可以有效地识别这些群体,与传统方法相比,在计算效率和稳健性方面具有相似的优势; 我们揭示了具有代表性的生活模式组,分析了不同时期和不同区域中人类生活模式的群体特征; 我们相信,我们的工作将有助于未来基础设施规划、服务改进和与城市和交通有关的政策,从而促进人性和可持续的城市。