Online social networks being extended to geographical space has resulted in large amount of user check-in data. Understanding check-ins can help to build appealing applications, such as location recommendation. In this paper, we propose DeepCity, a feature learning framework based on deep learning, to profile users and locations, with respect to user demographic and location category prediction. Both of the predictions are essential for social network companies to increase user engagement. The key contribution of DeepCity is the proposal of task-specific random walk which uses the location and user properties to guide the feature learning to be specific to each prediction task. Experiments conducted on 42M check-ins in three cities collected from Instagram have shown that DeepCity achieves a superior performance and outperforms other baseline models significantly.
History
Primary Research Area
Trustworthy Information Processing
Name of Conference
International Conference on Web and Social Media (ICWSM)
Journal
International Conference on Weblogs and Social Media (ICWSM)
Page Range
652-655
Publisher
AAAI
BibTeX
@conference{Pang:Zhang:2017,
title = "DeepCity: A Feature Learning Framework for Mining Location Check-Ins",
author = "Pang, Jun" AND "Zhang, Yang",
year = 2017,
month = 5,
journal = "International Conference on Weblogs and Social Media (ICWSM)",
pages = "652--655",
publisher = "AAAI"
}