CGAP: Urban Region Representation Learning with Coarsened Graph Attention Pooling
Zhuo Xu, Xiao Zhou

TL;DR
This paper introduces CGAP, a hierarchical graph pooling method that leverages urban graph structures and multi-modal data to improve urban region representations for socioeconomic prediction tasks.
Contribution
The paper proposes CGAP, a novel hierarchical graph pooling technique with attention mechanisms that effectively captures urban region information from multi-modal data.
Findings
CGAP outperforms baseline methods in socioeconomic prediction tasks.
Incorporating multi-modal urban data improves region representation quality.
Hierarchical pooling reduces over-smoothing in graph neural networks.
Abstract
The explosion of massive urban data recently has provided us with a valuable opportunity to gain deeper insights into urban regions and the daily lives of residents. Urban region representation learning emerges as a crucial realm for fulfilling this task. Among deep learning approaches, graph neural networks (GNNs) have shown promise, given that city elements can be naturally represented as nodes with various connections between them as edges. However, many existing GNN approaches encounter challenges such as over-smoothing and limitations in capturing information from nodes in other regions, resulting in the loss of crucial urban information and a decline in region representation performance. To address these challenges, we leverage urban graph structure information and introduce a hierarchical graph pooling process called Coarsened Graph Attention Pooling (CGAP). CGAP features local…
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Taxonomy
TopicsHuman Mobility and Location-Based Analysis · Geographic Information Systems Studies · Automated Road and Building Extraction
