Potential Landscapes Reveal Spatiotemporal Structure in Urban Mobility: Hodge Decomposition and Principal Component Analysis of Tokyo Before and During COVID-19
Yunhan Du, Takaaki Aoki, Naoya Fujiwara

TL;DR
This paper introduces a two-step dimensionality reduction framework combining Hodge theory and PCA to analyze and interpret complex spatiotemporal human mobility patterns, revealing significant changes during COVID-19 in Tokyo.
Contribution
The study presents a novel framework that effectively decouples spatial and temporal components of mobility data, enhancing understanding of urban flow dynamics during a pandemic.
Findings
Mobility declined overall during COVID-19
Distinct weekday and holiday mobility patterns emerged
The framework successfully identified key spatiotemporal variations
Abstract
Understanding human mobility is vital to solving societal challenges, such as epidemic control and urban transportation optimization. Recent advancements in data collection now enable the exploration of dynamic mobility patterns in human flow. However, the vast volume and complexity of mobility data make it difficult to interpret spatiotemporal patterns directly, necessitating effective information reduction. The core challenge is to balance data simplification with information preservation: methods must retain location-specific information about human flows from origins to destinations while reducing the data to a comprehensible level. This study proposes a two-step dimensionality reduction framework: First, combinatorial Hodge theory is applied to the given origin--destination (OD) matrices with timestamps to construct a set of potential landscapes of human flow, preserving imbalanced…
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Taxonomy
TopicsHuman Mobility and Location-Based Analysis · Geographic Information Systems Studies · Data-Driven Disease Surveillance
