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Umigon-lexicon: rule-based model for interpretable sentiment analysis and factuality categorization
Journal article   Peer reviewed

Umigon-lexicon: rule-based model for interpretable sentiment analysis and factuality categorization

Clément Levallois
Language Resources and Evaluation, Vol.59(2), pp.913-930
01/06/2025

Abstract

sentiment analysis factuality categorization subjectivity detection lexicons
We introduce umigon-lexicon, a novel resource comprising English lexicons and associated conditions designed specifically to evaluate the sentiment conveyed by an author's subjective perspective. We conduct a comprehensive comparison with existing lexicons and evaluate umigon-lexicon's efficacy in sentiment analysis and factuality classification tasks. This evaluation is performed across eight datasets and against six models. The results demonstrate umigon-lexicon's competitive performance, underscoring the enduring value of lexicon-based solutions in sentiment analysis and factuality categorization. Furthermore, umigon-lexicon stands out for its intrinsic interpretability and the ability to make its operations fully transparent to end users, offering significant advantages over existing models.
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Citation topics
4 Electrical Engineering, Electronics & Computer Science
4.48 Knowledge Engineering & Representation
4.48.672 Natural Language Processing
Web of Science research areas
Computer Science, Interdisciplinary Applications
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