|  | Multi-scaled Spatial Analytics on Discovering Latent Social Events for Smart Urban Services
               O-Joun Lee (Chung-Ang University, Korea)
 
               Yunhu Kim (Chung-Ang University, Korea)
 
               Hoang Long Nguyen (Chung-Ang University, Korea)
 
               Jai E. Jung (Chung-Ang University, Korea)
 
              Abstract: The goal of this paper is to discover latent   social events from social media for sensitively understanding social   opinions that appeared within a city. The latent social event   indicates a regional and inconspicuous social event which is mostly   buried under macroscopic trends or issues. To detect the latent   social event, we propose three methods: i) discovering   areas-ofinterest (AOIs), ii) allocating social texts to the AOIs,   and iii) detecting social events in each AOI. The AOIs can be   composed by grouping social texts which are topically and spatially   homogeneous.  To make the AOIs dynamic and incremental, we use   windows for allocating a social text to an adequate AOI. Lastly, the   latent social events are detected from the AOI on the basis of   keywords and temporal distribution of the social texts. Although, in   this study, we limited the proposed method into analyzing social   media, it could be extended to detecting events among   agents/things/sensors. 
             
              Keywords: area-of-interest, social event detection, social opinion mining, spatio-temporal analysis 
             Categories: I.2.8, I.m, J.4  |