Litcius/Paper detail

Semantics-Preserved Data Augmentation for Aspect-Based Sentiment Analysis

Ting-Wei Hsu, Chung-Chi Chen, Hen‐Hsen Huang, Hsin‐Hsi Chen

2021Proceedings of the 2021 Conference on Empirical Methods in Natural Language Processing37 citationsDOIOpen Access PDF

Abstract

Both the issues of data deficiencies and semantic consistency are important for data augmentation. Most of previous methods address the first issue, but ignore the second one. In the cases of aspect-based sentiment analysis, violation of the above issues may change the aspect and sentiment polarity. In this paper, we propose a semantics-preservation data augmentation approach by considering the importance of each word in a textual sequence according to the related aspects and sentiments. We then substitute the unimportant tokens with two replacement strategies without altering the aspect-level polarity. Our approach is evaluated on several publicly available sentiment analysis datasets and the real-world stock price/risk movement prediction scenarios. Experimental results show that our methodology achieves better performances in all datasets.

Topics & Concepts

Computer scienceSentiment analysisSemantics (computer science)Consistency (knowledge bases)Polarity (international relations)Word (group theory)Artificial intelligenceNatural language processingData miningInformation retrievalProgramming languageLinguisticsGeneticsPhilosophyBiologyCellSentiment Analysis and Opinion MiningAdvanced Text Analysis TechniquesTopic Modeling