Comparing mobility patterns between residents and visitors using geo-tagged social media data Academic Article uri icon

abstract

  • AbstractUnderstanding the behavior of residents and visitors is vital in tourism studies, urban planning, and local economic development. However, most existing studies consider visitors as one group, while overlooking the difference in mobility patterns between subgroups of visitors and residents. In this research, we analyzed the mobility pattern of local Twitter users and visitor Twitter users, from the flow network and evenness distribution of user activities. The results show that short distance movement is the dominant type of activity not only for residents, but also for visitors. Moreover, intracounty movement accounts for the primary type of movement for all groups of Twitter users. Besides, the centrality index of Twitter users reconstructs a coreperipheral structure, and there is some relationship between the centrality index and population size. Further, the spatial distribution of evenness index at different spatial scales shows a clear Tshaped coreperipheral structure. However, we need to synthesize multiple open big data to improve the study and conduct the analysis in future work at finer spatial scales, such as census tracts, census blocks, or the street level.

published proceedings

  • TRANSACTIONS IN GIS

author list (cited authors)

  • Liu, Q., Wang, Z., & Ye, X.

citation count

  • 26

publication date

  • December 2018

publisher