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Nonnegative Coupled Matrix Tensor Factorization for Smart City Spatiotemporal Pattern Mining

机译:智能城市时空模式采矿的非负耦合矩阵张量分解

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With the advancements in smartphones and inbuilt sensors, the day-to-day spatiotemporal activities of people can be recorded. With this available information, the automated extraction of spatiotemporal patterns is crucial to understand the people's mobility. These patterns can assist in improving the smart city environments like traffic control, urban planning, and transportation facilities. The smartphone generated spatiotemporal data is enriched with multiple contexts and efficiently utilizing them in a Machine Learning process is still a challenging task. In this paper, we propose a Nonnegative Coupled Matrix Tensor Factorization (CMTF) model to integrate and analyze additional contexts with spatiotemporal data to generate meaningful patterns. We also propose an efficient factorization algorithm based on variable selection to solve the Nonnegative CMTF model that yields accurate spatiotemporal patterns. Our empirical analysis highlights the efficiency of the proposed CMTF model in terms of accuracy and factor goodness.
机译:随着智能手机和内置传感器的进步,可以记录人们的日常时空活动。通过这种可用信息,即时提取时空模式对于了解人们的流动性至关重要。这些模式可以帮助改善交通控制,城市规划和运输设施等智能城市环境。智能手机生成的时空数据被丰富有多个上下文,并有效利用它们在机器学习过程中仍然是一个具有挑战性的任务。在本文中,我们提出了一种非负耦合矩阵张量因子(CMTF)模型,以集成和分析具有时空数据的附加上下文,以产生有意义的模式。我们还提出了一种基于变量选择的有效分解算法,以解决产生准确的时空图案的非负CMTF模型。我们的实证分析突出了提出的CMTF模型在准确性和因子良好方面的效率。

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