Paper ID: 2305.01710

Stars Are All You Need: A Distantly Supervised Pyramid Network for Unified Sentiment Analysis

Wenchang Li, Yixing Chen, Shuang Zheng, Lei Wang, John P. Lalor

Data for the Rating Prediction (RP) sentiment analysis task such as star reviews are readily available. However, data for aspect-category detection (ACD) and aspect-category sentiment analysis (ACSA) is often desired because of the fine-grained nature but are expensive to collect. In this work, we propose Unified Sentiment Analysis (Uni-SA) to understand aspect and review sentiment in a unified manner. Specifically, we propose a Distantly Supervised Pyramid Network (DSPN) to efficiently perform ACD, ACSA, and RP using only RP labels for training. We evaluate DSPN on multi-aspect review datasets in English and Chinese and find that in addition to the internal efficiency of sample size, DSPN also performs comparably well to a variety of benchmark models. We also demonstrate the interpretability of DSPN's outputs on reviews to show the pyramid structure inherent in unified sentiment analysis.

Submitted: May 2, 2023