From Stars to Insights: Exploration and Implementation of Unified Sentiment Analysis with Distant Supervision
/ Authors
/ Abstract
Sentiment analysis is integral to understanding the voice of the customer and informing businesses’ strategic decisions. Conventional sentiment analysis involves three separate tasks: aspect-category detection, aspect-category sentiment analysis, and rating prediction. However, independently tackling these tasks can overlook their interdependencies and often requires expensive, fine-grained annotations. This article introduces unified sentiment analysis, a novel learning paradigm that integrates the three aforementioned tasks into a coherent framework. To achieve this, we propose the Distantly Supervised Pyramid Network (DSPN), which employs a pyramid structure to capture sentiment at word, aspect, and document levels in a hierarchical manner. Evaluations on multi-aspect review datasets in English and Chinese show that DSPN, using only star rating labels for supervision, demonstrates significant efficiency advantages while performing comparably well to a variety of benchmark models. Additionally, DSPN’s pyramid structure enables the interpretability of its outputs. Our findings validate DSPN’s effectiveness and efficiency, establishing a robust, resource-efficient, unified framework for sentiment analysis.
Journal: ACM Transactions on Management Information Systems
DOI: 10.1145/3757747