Pretraining Sentiment Classifiers with Unlabeled Dialog Data
The 56th Annual Meeting of the Association for Computational Linguistics(ACL 2018), 2018/7
Natural Language Processing
- The huge cost of creating labeled training data is a common problem for supervised learning tasks such as sentiment classification. Recent studies showed that pretraining with unlabeled data via a language model can improve the performance of classification models. In this paper, we take the concept a step further by using a conditional language model, instead of a language model. Specifically, we address a sentiment classification task for a tweet analysis service as a case study and propose a pretraining strategy with unlabeled dialog data (tweet-reply pairs) via an encoder-decoder model. Experimental results show that our strategy can improve the performance of sentiment classifiers and outperform several state-of-the-art strategies including language model pretraining.
Pretraining Sentiment Classifiers with Unlabeled Dialog Data（External Site Link）