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首页> 外文期刊>ACM transactions on knowledge discovery from data >Robust Tensor Recovery with Fiber Outliers for Traffic Events
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Robust Tensor Recovery with Fiber Outliers for Traffic Events

机译:具有流量事件的光纤异常值的强大张力恢复

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摘要

Event detection is gaining increasing attention in smart cities research. Large-scale mobility data serves as an important tool to uncover the dynamics of urban transportation systems, and more often than not the dataset is incomplete. In this article, we develop a method to detect extreme events in large traffic datasets, and to impute missing data during regular conditions. Specifically, we propose a robust tensor recovery problem to recover low-rank tensors under fiber-sparse corruptions with partial observations, and use it to identify events, and impute missing data under typical conditions. Our approach is scalable to large urban areas, taking full advantage of the spatio-temporal correlations in traffic patterns. We develop an efficient algorithm to solve the tensor recovery problem based on the alternating direction method of multipliers (ADMM) framework. Compared with existing l(1) norm regularized tensor decomposition methods, our algorithm can exactly recover the values of uncorrupted fibers of a low-rank tensor and find the positions of corrupted fibers under mild conditions. Numerical experiments illustrate that our algorithm can achieve exact recovery and outlier detection even with missing data rates as high as 40% under 5% gross corruption, depending on the tensor size and the Tucker rank of the low rank tensor. Finally, we apply our method on a real traffic dataset corresponding to downtown Nashville, TN and successfully detect the events like severe car crashes, construction lane closures, and other large events that cause significant traffic disruptions.
机译:事件检测在智能城市研究中获得了越来越多的关注。大型移动数据是揭示城市交通系统动态的重要工具,而且比数据集更频繁地是不完整的。在本文中,我们开发了一种方法来检测大型交通数据集中的极端事件,并在常规条件下施加缺失数据。具体地,我们提出了一种强大的张量恢复问题,以在具有部分观测的纤维稀疏损坏下恢复低级张量,并使用它来识别事件,并在典型条件下赋予缺失数据。我们的方法可扩展到大城区,充分利用交通模式中的时空相关性。我们开发一种高效的算法,基于乘法器(ADMM)框架的交替方向方法来解决张量恢复问题。与现有的L(1)规范正则化张量分解方法相比,我们的算法可以完全恢复低级张量的未损坏光纤的值,并在温和条件下找到损坏的纤维的位置。数值实验说明我们的算法可以实现精确的恢复和异常值检测,即使数据速率缺失高达40%的损坏,根据张量大尺寸和低等级张量的缩小距离,也可以获得高达40%的数据速率。最后,我们在与纳什维尔市中心,TN相对应的真正交通数据集上应用我们的方法,并成功地检测严重车祸,建筑车道关闭等事件,以及导致大量交通中断的其他大事件。

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