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.
Wan NieDeguang LiuShuai Cheng LiHaizhu YuYao Fu
Prashant K. SrivastavaAlexandra SteuerFrancesco FerriAlessandro NicoliKristian SchultzSaptarshi BejAntonella Di PizioOlaf Wolkenhauer
Seoyeong HwangHaeun YumHo-Hee SonTaeyong LeeJunhyug Noh