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In this research, we designed a spatial data warehouse to store and manage the check-in data, used OLAP analysis technology to analyze it, and found many ...
[RDF data]. Spatio-temporal Analysis of Weibo Check-in Data Based on Spatial Data Warehouse. Resource URI: https://dblp.l3s.de/d2r/resource/publications/conf ...
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Using the method of the spatial analysis of the data direction distribution and hierarchical analysis, we found that the check-in data has the close contact ...
Missing: Warehouse. | Show results with:Warehouse.
This study aims to portray the spatiotemporal variation patterns of urban vibrancy in 24 h and investigate the potential influence mechanism of it.
Missing: Warehouse. | Show results with:Warehouse.
Sep 13, 2021 · The primary goal of the study is to look into the impact of several forms of entertainment activities on the density dispersal of occupants in Shanghai, China.
In this study, we employed the Neo4j graph database as the technological foundation, utilizing Sina Weibo data, to construct a spatial-temporal knowledge graph.
The current study shows that the point density and kernel density estimation techniques provide useful insights for modeling spatial patterns using ...
Missing: Warehouse. | Show results with:Warehouse.
Jul 23, 2019 · The aim of the present study was to identify and compare the spatio-temporal behaviours of mainland Chinese tourists and residents in Hong Kong ...
Missing: Warehouse. | Show results with:Warehouse.
Jan 21, 2020 · The aim of this study is to analyze and compare the patterns of behavior of tourists and residents from Location-Based Social Network (LBSN) data in Shanghai, ...
Missing: Warehouse. | Show results with:Warehouse.
The aim of the present study was to identify and compare the spatio-temporal behaviours of mainland Chinese tourists and residents in Hong Kong over a period ...
Missing: Warehouse. | Show results with:Warehouse.