Twitter User Geolocation using Deep Multiview Learning Host Publication: IEEE International Conference on Acoustics, Speech and Signal Processing Authors: T. Do, D. Nguyen, E. Tsiligianni, B. Cornelis and N. Deligiannis Publisher: IEEE Publication Date: Apr. 2018 Number of Pages: 5 ISBN: 9781538646588
Abstract: Predicting the geographical location of users on social networks like Twitter is an active research topic with plenty of methods proposed so far. Most of the existing work follows either a content-based or a network-based approach. The former is based on user-generated content while the latter exploits the structure of the network of users. In this paper, we propose a more generic approach, which incorporates not only both content-based and network-based features, but also other available information into a unified model. Our approach, named Multi-Entry Neural Network (MENET), leverages the latest advances in deep learning and multiview learning. A realization of MENET with textual, network and metadata features results in an effective method for Twitter user geolocation, achieving the state of the art on two well-known datasets.
|