Multi-Factor Spatio-Temporal Prediction based on Graph Decomposition Learning
Jiahao Ji, Jingyuan Wang, Yu Mou, and Cheng Long

TL;DR
This paper introduces a novel multi-factor spatio-temporal prediction framework that decomposes graph structures to improve accuracy and interpretability in urban data analysis, validated on real-world datasets.
Contribution
It proposes a theoretical decomposed prediction strategy and a portable graph decomposition learning framework for multi-factor spatio-temporal prediction.
Findings
Reduces prediction errors by 9.41% on average across datasets.
Demonstrates the interpretability potential of the framework.
Validates effectiveness on grid and network graph datasets.
Abstract
Spatio-temporal (ST) prediction is an important and widely used technique in data mining and analytics, especially for ST data in urban systems such as transportation data. In practice, the ST data generation is usually influenced by various latent factors tied to natural phenomena or human socioeconomic activities, impacting specific spatial areas selectively. However, existing ST prediction methods usually do not refine the impacts of different factors, but directly model the entangled impacts of multiple factors. This amplifies the modeling complexity of ST data and compromises model interpretability. To this end, we propose a multi-factor ST prediction task that predicts partial ST data evolution under different factors, and combines them for a final prediction. We make two contributions to this task: an effective theoretical solution and a portable instantiation framework.…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Human Mobility and Location-Based Analysis · Transportation Planning and Optimization
