路线到时间和时间到路线:从稀疏轨迹估计旅行时间

Zhiwen Zhang, Hongjun Wang, Z. Fan, Jiyuan Chen, Xuan Song, R. Shibasaki
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引用次数: 1

摘要

由于物联网(IoT)技术的快速发展,许多在线web应用程序(如谷歌地图和优步)估计移动设备收集的轨迹数据的旅行时间。但在现实中,由于网络通信、能量约束等复杂因素,使得采集到的多轨迹采样率较低。在这种情况下,本文旨在解决稀疏场景下旅行时间估计(TTE)和路线恢复问题,该问题经常导致连续采样GPS点之间的旅行时间和路线标记不确定。我们将此问题表述为训练数据具有粗粒度标签的非精确监督问题,共同解决TTE和路由恢复的任务。我们认为这两个任务在模型学习过程中是相互补充的,并且保持这样的关系:更精确的旅行时间可以导致更好的路线推断,反过来,导致更准确的时间估计)。基于这一假设,我们提出了一种EM算法,交替地在E步中通过弱监督估计推断路线的行程时间,并在M步中根据估计的行程时间检索稀疏轨迹。我们在三个真实的轨迹数据集上进行了实验,并证明了所提出方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Route to Time and Time to Route: Travel Time Estimation from Sparse Trajectories
Due to the rapid development of Internet of Things (IoT) technologies, many online web apps (e.g., Google Map and Uber) estimate the travel time of trajectory data collected by mobile devices. However, in reality, complex factors, such as network communication and energy constraints, make multiple trajectories collected at a low sampling rate. In this case, this paper aims to resolve the problem of travel time estimation (TTE) and route recovery in sparse scenarios, which often leads to the uncertain label of travel time and route between continuously sampled GPS points. We formulate this problem as an inexact supervision problem in which the training data has coarsely grained labels and jointly solve the tasks of TTE and route recovery. And we argue that both two tasks are complementary to each other in the model-learning procedure and hold such a relation: more precise travel time can lead to better inference for routes, in turn, resulting in a more accurate time estimation). Based on this assumption, we propose an EM algorithm to alternatively estimate the travel time of inferred route through weak supervision in E step and retrieve the route based on estimated travel time in M step for sparse trajectories. We conducted experiments on three real-world trajectory datasets and demonstrated the effectiveness of the proposed method.
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