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Will sentiment analysis need subculture? A new data augmentation approach

Zhenhua Wang, Simin He, Guang Xu, Ming Ren

2024Journal of the Association for Information Science and Technology13 citationsDOI

Abstract

Abstract Nowadays, the omnipresence of the Internet has fostered a subculture that congregates around the contemporary milieu. The subculture artfully articulates the intricacies of human feelings by ardently pursuing the allure of novelty, a fact that cannot be disregarded in the sentiment analysis. This paper aims to enrich data through the lens of subculture, to address the insufficient training data faced by sentiment analysis. To this end, a new approach of subculture‐based data augmentation (SCDA) is proposed, which engenders enhanced texts for each training text by leveraging the creation of specific subcultural expression generators. The extensive experiments attest to the effectiveness and potential of SCDA. The results also shed light on the phenomenon that disparate subcultural expressions elicit varying degrees of sentiment stimulation. Moreover, an intriguing conjecture arises, suggesting the linear reversibility of certain subcultural expressions.

Topics & Concepts

Subculture (biology)NoveltyExpression (computer science)SociologyComputer scienceSentiment analysisFeelingPsychologyArtificial intelligenceSocial psychologyBotanyBiologyProgramming languageSentiment Analysis and Opinion MiningHumor Studies and ApplicationsTopic Modeling
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