CSGAN: Modality-Aware Trajectory Generation via Clustering-based Sequence GAN.

Minxing Zhang, Haowen Lin, Shun Takagi, Yang Cao, Cyrus Shahabi, Li Xiong
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Abstract

Human mobility data is useful for various applications in urban planning, transportation, and public health, but collecting and sharing real-world trajectories can be challenging due to privacy and data quality issues. To address these problems, recent research focuses on generating synthetic trajectories, mainly using generative adversarial networks (GANs) trained by real-world trajectories. In this paper, we hypothesize that by explicitly capturing the modality of transportation (e.g., walking, biking, driving), we can generate not only more diverse and representative trajectories for different modalities but also more realistic trajectories that preserve the geographical density, trajectory, and transition level properties by capturing both cross-modality and modality-specific patterns. Towards this end, we propose a Clustering-based Sequence Generative Adversarial Network (CSGAN) that simultaneously clusters the trajectories based on their modalities and learns the essential properties of real-world trajectories to generate realistic and representative synthetic trajectories. To measure the effectiveness of generated trajectories, in addition to typical density and trajectory level statistics, we define several new metrics for a comprehensive evaluation, including modality distribution and transition probabilities both globally and within each modality. Our extensive experiments with real-world datasets show the superiority of our model in various metrics over state-of-the-art models.

基于聚类序列GAN的模态感知轨迹生成。
人类移动数据对于城市规划、交通和公共卫生的各种应用都很有用,但由于隐私和数据质量问题,收集和共享现实世界的轨迹可能具有挑战性。为了解决这些问题,最近的研究重点是生成合成轨迹,主要使用由现实世界轨迹训练的生成对抗网络(GANs)。在本文中,我们假设通过明确地捕获交通方式(例如,步行,骑自行车,驾驶),我们不仅可以为不同的交通方式生成更多样化和更具代表性的轨迹,而且可以通过捕获跨模式和特定模式来生成更现实的轨迹,从而保持地理密度,轨迹和过渡水平属性。为此,我们提出了一种基于聚类的序列生成对抗网络(CSGAN),该网络同时根据轨迹的模式对轨迹进行聚类,并学习现实世界轨迹的基本属性,以生成逼真且具有代表性的合成轨迹。为了衡量生成轨迹的有效性,除了典型的密度和轨迹水平统计外,我们还定义了几个新的综合评估指标,包括全局和每个模态内的模态分布和转移概率。我们对真实世界数据集的广泛实验表明,我们的模型在各种指标上优于最先进的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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