Abstract

Accurately predicting the potential foot traffic for a new business is a crucial task since it directly impacts a business's ability to generate revenue. In this work, a graph neural networkbased approach is introduced in which the foot traffic between businesses and neighborhoods is represented in a bipartite network setting where edges capture the yearly-aggregated foot traffic quartile labels. Resulting bipartite networks are fed to the graph neural network to predict the foot traffic label for a new business for all the available neighborhoods. The graph neural network model outperforms well-established Huff model by 3% higher F1 score. Our results indicate that utilizing graph neural network architectures for foot traffic prediction is promising and requires more attention from the field.

Keywords:
Bipartite graph Computer science Artificial neural network Graph Artificial intelligence Machine learning Theoretical computer science

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Topics

Network Traffic and Congestion Control
Physical Sciences →  Computer Science →  Computer Networks and Communications
Green IT and Sustainability
Physical Sciences →  Engineering →  Electrical and Electronic Engineering
VLSI and FPGA Design Techniques
Physical Sciences →  Engineering →  Electrical and Electronic Engineering

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