Wang, Jingxuan
Attention Based LSTM for Target Dependent Sentiment Classification
Yang, Min (The University of Hong Kong) | Tu, Wenting (The University of Hong Kong) | Wang, Jingxuan (The University of Hong Kong) | Xu, Fei (Chinese Academy of Sciences) | Chen, Xiaojun (Shenzhen University)
We present an attention-based bidirectional LSTM approach to improve the target-dependent sentiment classification. Our method learns the alignment between the target entities and the most distinguishing features. We conduct extensive experiments on a real-life dataset. The experimental results show that our model achieves state-of-the-art results.
Authorship Attribution with Topic Drift Model
Yang, Min (The University of Hong Kong) | Zhu, Dingju (South China Normal University) | Tang, Yong (South China Normal University) | Wang, Jingxuan (The University of Hong Kong)
Authorship attribution is an active research direction due to its legal and financial importance. The goal is to identify the authorship of anonymous texts. In this paper, we propose a Topic Drift Model (TDM), monitoring the dynamicity of authors’ writing style and latent topics of interest. Our model is sensitive to the temporal information and the ordering of words, thus it extracts more information from texts.