A Latent Variable Model for Viewpoint Discovery from Threaded Forum Posts
Minghui Qiu and Jing Jiang
Threaded discussion forums provide an important social media platform. Its rich
user generated content has served as an important source of public feedback. To
automatically discover the viewpoints or stances on hot issues from forum
threads is an important and useful task. In this paper, we propose a novel
latent variable model for viewpoint discovery from threaded forum posts. Our
model is a principled generative latent variable model which captures three
important factors: viewpoint specific topic preference, user identity and user
interactions. Evaluation results show that our model clearly outperforms a
number of baseline models in terms of both clustering posts based on viewpoints
and clustering users with different viewpoints.
Back to Papers Accepted