TY - JOUR
T1 - Changes in visitor behaviour across COVID-19 pandemic
T2 - Unveiling urban visitation dynamics and non-linear relationships with the built environment using mobile big data
AU - Yuan, Lang
AU - Sho, Kojiro
AU - Eom, Sunyong
AU - Nishi, Hayato
AU - Hasegawa, Daisuke
AU - Zhao, Han
AU - Aoki, Takashi
AU - Zhu, Jiarui
AU - Matsuo, Kaoru
AU - Masumura, Akinobu
N1 - Publisher Copyright:
© 2024 The Author(s)
PY - 2024/12
Y1 - 2024/12
N2 - COVID-19 has significantly affected the behavioural patterns of urban visitors. However, the non-linear relationships between visitor behaviour and built environments, particularly how these relationships have evolved during the pandemic, have not yet been extensively studied. Using over 10 million mobile big data records collected over three years in Fukuoka, Japan, incorporating the XGBoost machine learning model and SHAP-PDP interpretation method, we identified non-linear relationships between visitor behaviours and built environments. Our findings uncovered significant non-linear impacts on visitor behaviour of several urban characteristics, such as floor area ratio, building coverage ratio, road density, and POI richness. Notably, the floor area ratio exhibits a negative correlation with visit frequency below 1 but a positive correlation above 2. Building coverage ratio positively impacts visit frequency up to 1000 m2 per 10,000 m2, after which it turns negative; this correlation shifted towards a consistent negative trend during the pandemic. Road density, which usually correlates negatively with visit duration, became positively correlated above 700 m2 per 10,000 m2 during the pandemic. Similarly, the influence of floor area ratio on visit duration reversed from negative to positive under pandemic conditions. Revealing the dynamic and non-monotonic nature of how urban visitors respond to the built environment under the influence of the pandemic, our results provide valuable insights for urban planning strategies in response to crisis resiliently.
AB - COVID-19 has significantly affected the behavioural patterns of urban visitors. However, the non-linear relationships between visitor behaviour and built environments, particularly how these relationships have evolved during the pandemic, have not yet been extensively studied. Using over 10 million mobile big data records collected over three years in Fukuoka, Japan, incorporating the XGBoost machine learning model and SHAP-PDP interpretation method, we identified non-linear relationships between visitor behaviours and built environments. Our findings uncovered significant non-linear impacts on visitor behaviour of several urban characteristics, such as floor area ratio, building coverage ratio, road density, and POI richness. Notably, the floor area ratio exhibits a negative correlation with visit frequency below 1 but a positive correlation above 2. Building coverage ratio positively impacts visit frequency up to 1000 m2 per 10,000 m2, after which it turns negative; this correlation shifted towards a consistent negative trend during the pandemic. Road density, which usually correlates negatively with visit duration, became positively correlated above 700 m2 per 10,000 m2 during the pandemic. Similarly, the influence of floor area ratio on visit duration reversed from negative to positive under pandemic conditions. Revealing the dynamic and non-monotonic nature of how urban visitors respond to the built environment under the influence of the pandemic, our results provide valuable insights for urban planning strategies in response to crisis resiliently.
KW - Built environment
KW - Mobile phone signalling data
KW - Non-linear effect
KW - SHAP
KW - Visitor behaviour
KW - XGBoost
UR - http://www.scopus.com/inward/record.url?scp=85208142920&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85208142920&partnerID=8YFLogxK
U2 - 10.1016/j.habitatint.2024.103216
DO - 10.1016/j.habitatint.2024.103216
M3 - Article
AN - SCOPUS:85208142920
SN - 0197-3975
VL - 154
JO - Habitat International
JF - Habitat International
M1 - 103216
ER -