基于随机对抗网络的多模态时空预测

Divya Saxena, Jiannong Cao
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引用次数: 2

摘要

时空数据是不同空间位置的多个时间序列数据的集合,具有固有的随机性和不可预测性。对此类数据的准确预测是许多城市应用程序的重要组成部分,例如出租车需求预测、交通流量预测等。现有的基于深度学习的方法假设结果是确定的,只有一个可能的未来;因此,无法捕捉未来内容和动态的多式联运性质。此外,现有的方法分别学习空间和时间数据,因为它们之间存在弱相关性。为了解决这些问题,在本文中,我们提出了一种随机时空生成模型(D-GAN),该模型采用基于生成对抗网络(gan)的结构,在多个时间步长中更准确地预测ST。D-GAN由两个部分组成:(1)时空相关网络,该网络模拟像素的时空联合分布,并支持对多个可能未来的潜在变量进行随机抽样;(2)随机对抗网络,通过隐式分布建模共同学习数据的生成和变分推理。D-GAN还通过明确的目标支持外部因素的融合,以提高模型的学习能力。在两个真实数据集上进行的大量实验表明,D-GAN实现了显着改进,并且优于基线模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal Spatio-Temporal Prediction with Stochastic Adversarial Networks
Spatio-temporal (ST) data is a collection of multiple time series data with different spatial locations and is inherently stochastic and unpredictable. An accurate prediction over such data is an important building block for several urban applications, such as taxi demand prediction, traffic flow prediction, and so on. Existing deep learning based approaches assume that outcome is deterministic and there is only one plausible future; therefore, cannot capture the multimodal nature of future contents and dynamics. In addition, existing approaches learn spatial and temporal data separately as they assume weak correlation between them. To handle these issues, in this article, we propose a stochastic spatio-temporal generative model (named D-GAN) which adopts Generative Adversarial Networks (GANs)-based structure for more accurate ST prediction in multiple time steps. D-GAN consists of two components: (1) spatio-temporal correlation network which models spatio-temporal joint distribution of pixels and supports a stochastic sampling of latent variables for multiple plausible futures; (2) a stochastic adversarial network to jointly learn generation and variational inference of data through implicit distribution modeling. D-GAN also supports fusion of external factors through explicit objective to improve the model learning. Extensive experiments performed on two real-world datasets show that D-GAN achieves significant improvements and outperforms baseline models.
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