TL;DR
This paper explores fine-grained emotion extraction from app reviews, adapting Plutchik's taxonomy, creating an annotated dataset, and evaluating large language models for automation, highlighting challenges and potential solutions.
Contribution
It introduces a structured annotation framework and dataset for emotion classification in app reviews, and assesses large language models for automated emotion annotation.
Findings
Large language models reduce manual effort significantly.
Models achieve substantial agreement with human annotations.
Full automation of emotion classification remains challenging.
Abstract
Opinion mining plays a vital role in analysing user feedback and extracting insights from textual data. While most research focuses on sentiment polarity (e.g., positive, negative, neutral), fine-grained emotion classification in app reviews remains underexplored. Fine-grained emotion classification is thus needed to better understand users' affective responses and support downstream tasks such as feature-emotion analysis, user-oriented release planning, and issue triaging. This paper addresses this gap by identifying and addressing the challenges and limitations in fine-grained emotion analysis in the context of app reviews. Our study adapts Plutchik's emotion taxonomy to app reviews by developing a structured annotation framework and dataset. Through an iterative human annotation process, we define clear annotation guidelines and document key challenges in emotion classification.…
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