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A Variational Autoencoder Based Generative Model of Urban Human Mobility

机译:基于变型自动编码器的城市人口流动生成模型

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Recently, big and heterogeneous human mobility data inspires many revolutionary ideas of implementing machine learning algorithms for solving some traditional social issues, such as zone regulation, air pollution, and disaster evacuation el at.. However, incomplete datasets were provided owing to both the concerns of violation of privacy and some technique issues in many practical applications, which leads to some limitations of the utility of collected data. Variational Autoencoder (VAE), which uses a well-constructed latent space to capture salient features of the training data, shows a significant excellent performance in not only image processing, but also Natural Language Processing domain. By combining VAE and sequence-to-sequence (seq2seq) model, a Sequential Variational Autoencoder (SVAE) is built for the task of human mobility reconstruction. It is the first time that this kind of SVAE model is implemented for solving the issues about human mobility reconstruction. We use navigation GPS data of selected greater Tokyo area to evaluate the performance of the SVAE model. Experimental results demonstrate that the SVAE model can efficiently capture the salient features of human mobility data and generate more reasonable trajectories.
机译:最近,庞大而异类的人员流动数据激发了许多革命性的思想,实现了机器学习算法来解决一些传统的社会问题,例如区域管制,空气污染和灾难疏散等。然而,由于这两个方面的考虑,提供的数据集不完整侵犯隐私和许多实际应用中的一些技术问题,这导致收集数据的实用性受到某些限制。可变自动编码器(VAE)使用结构良好的潜在空间来捕获训练数据的显着特征,它不仅在图像处理领域而且在自然语言处理领域都表现出显着的出色性能。通过将VAE和序列到序列(seq2seq)模型相结合,构建了序列变异自动编码器(SVAE),用于人类移动性重建的任务。首次采用这种SVAE模型来解决有关人类活动能力重建的问题。我们使用选定的较大东京地区的导航GPS数据来评估SVAE模型的性能。实验结果表明,SVAE模型可以有效地捕获人类流动性数据的显着特征并生成更合理的轨迹。

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