Redirigiendo al acceso original de articulo en 18 segundos...
ARTÍCULO
TITULO

Site Selection Prediction for Coffee Shops Based on Multi-Source Space Data Using Machine Learning Techniques

Jiaqi Zhao    
Baiyi Zong and Ling Wu    

Resumen

Based on a study of the spatial distribution of coffee shops in the main urban area of Beijing, the main influencing factors were selected based on the multi-source space data. Subsequently, three regression models were compared, and the best site selection model was found. A comparison was performed between the prediction model functioning with a buffer and without one, and the accuracy of the location model was verified by comparing the actual change trend and the predicted trend in two years. The following conclusions were obtained: (1) coffee shops in the main urban area of Beijing are clustered in an area within 12 km of the main urban center, and also around the core commercial agglomeration area; (2) the random forest (RF) model is the best model in this study, and the accuracy values before and after buffer analysis were 0.915 and 0.929, respectively; and (3) after verifying the accuracy of the model through two years of data, we recommend the establishment of a main road buffer zone for site selection, and the success rate of site selection was found to reach 72.97%. This study provides crucial insight for coffee shop prediction model selection and potential store location selection, which is significant to improving the layout of leisure spaces and promoting economic development.

PÁGINAS
pp. 0 - 0
MATERIAS
INFRAESTRUCTURA
REVISTAS SIMILARES

 Artículos similares