Abstract

Twitter provides a rich database of spatiotemporal information about users who broadcast their real-time opinions, sentiment, and activities. In this paper, we sought to investigate the holistic influence of land use and time period on public sentiment. A total of 880,937 tweets posted by 26,060 active users were collected across Massachusetts (MA), USA, through 31 November 2012 to 3 June 2013. The IBM Watson Alchemy API (application program interface) was employed to quantify the sentiment scores conveyed by tweets on a large scale. Then we statistically analyzed the sentiment scores across different spaces and times. A multivariate linear mixed-effects model was used to quantify the fixed effects of land use and the time period on the variations in sentiment scores, considering the clustering effect of users. The results exposed clear spatiotemporal patterns of users’ sentiment. Higher sentiment scores were mainly observed in the commercial and public areas, during the noon/evening and on weekends. Our findings suggest that social media outputs can be used to better understand the spatial and temporal patterns of public happiness and well-being in cities and regions.

Highlights

  • Social media has become ubiquitous in daily communications

  • Geo-tagged tweets have been widely used in geographical information system (GIS) research

  • GIS researchers are interested in studying the location awareness and social characteristics based on collected tweets [2,3,4]

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Summary

Introduction

Twitter is currently the most popular social media platform, with a global reach of 1 billion monthly visits to the site with embedded tweets by 313 million active users [1]. Geo-tagged tweets have been widely used in geographical information system (GIS) research. GIS researchers are interested in studying the location awareness and social characteristics based on collected tweets [2,3,4]. Tweets can record users’ daily activities varying across personal characteristics, locations, and temporal rhythms. Such variations are unlikely to be discovered by conventional geodemographic methods, which associate activities only with residence at nighttime [5]. Along with topic modeling techniques [6], the geographic distribution of Twitter data can further help to

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