Jan Mendling, Ingo Weber, et al.
ACM TMIS
We propose Limbic, an unsupervised probabilistic model that addresses the problem of discovering aspects and sentiments and associating them with authors of opinionated texts. Limbic combines three ideas, incorporating authors, discourse relations, and word embeddings. For discourse relations, Limbic adopts a generative process regularized by a Markov Random Field. To promote words with high semantic similarity into the same topic, Limbic captures semantic regularities from word embeddings via a generalized Pólya Urn process. We demonstrate that Limbic (1) discovers aspects associated with sentiments with high lexical diversity; (2) outperforms state-of-the-art models by a substantial margin in topic cohesion and sentiment classification.
Jan Mendling, Ingo Weber, et al.
ACM TMIS
Matteo Baldoni, Nirmit Desai, et al.
AAMAS 2009
Yufang Hou
EMNLP 2018
Shraey Bhatia, Jey Han Lau, et al.
EMNLP 2018