KDD2025
Toast: Task-Oriented Multi-dimensional Augmentation for Spatio-Temporal Trajectory Data
Junhao Zhu, Tao Wang, Lu Chen, Ziquan Fang, Yunjun Gao, Tianyi Li
摘要
With the growing availability of large data repositories within and across organizations, it is becoming feasible to selectively acquire data in the wild for data augmentation, tailored to specific downstream tasks. However, current methodologies concentrate primarily on single-dimensional augmentation tasks for tabular data, such as increasing the number of data points or enriching features. These approaches are not designed for trajectory data, which cannot fully utilize its spatio-temporal characteristics, resulting in suboptimal performance.