TL;DR
SEDAN is a novel graph-based diffusion model that integrates urban semantics and spatial constraints to generate realistic and generalizable origin-destination matrices across different cities.
Contribution
The paper introduces SEDAN, a structure-enhanced diffusion model that jointly models semantic attributes and spatial structure for improved OD matrix generation.
Findings
SEDAN outperforms the baseline WEDAN with a 7.38% RMSE improvement.
SEDAN remains robust across diverse urban scenarios and structural patterns.
The model effectively captures both behavioral and geographical aspects of commuting flows.
Abstract
Accurate modeling of commuting flows is important for urban governance, traffic planning, and resource allocation. However, the combined influence of individual intentions, geographic constraints, and social dynamics leads to considerable heterogeneity in commuting patterns, making it difficult to develop generation models that generalize across cities. To address this issue, we propose SEDAN, a Structure-Enhanced Diffusion model conditioned on Attributed Nodes for generalizable OD matrix generation. SEDAN models a city as an attributed graph. Each region is treated as a node with demographic and point-of-interest features, and commuting flows are modeled as weighted edges. Adjacency and distance matrices are incorporated to characterize spatial structure. Based on this representation, we design a fusion mechanism within SEDAN to jointly model semantic information and spatial…
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