Abstract :
Location information in social media is becoming increasingly vital in applications such as election prediction, epidemic forecasting, and emergency detection. However, only a tiny proportion of users proactively share their residence locations (which can be used to approximate the locations of most user-generated content) in their profiles, and inferring the residence location of the remaining users is nontrivial. In this article, the authors propose a framework for residence location inference in social media by jointly considering social, visual, and textual information. They first propose a data-driven approach to explore the use of friendship locality, social proximity, and content proximity for geographically nearby users. Based on these observations, they then propose a location propagation algorithm to effectively infer residence location for social media users. They extensively evaluate the proposed method using a large-scale real dataset and achieve a 15 percent relative improvement over state-of-the-art approaches.
Keywords :
forecasting theory; graph theory; social networking (online); content proximity; election prediction; emergency detection; epidemic forecasting; friendship locality; graph-based residence location inference; large-scale real dataset; location information; location propagation algorithm; social media users; social proximity; user-generated content; Data mining; Graphy theory; Media; Network security; Prediction algorithms; Research and development; Social network services; Twitter; User-generated content; Visualization; location prediction; multimedia; social graph; social media; user profiling;