A Neutrosophic Approach to Improving Sentiment Classification Accuracy in Social Media Analytics

Traditional sentiment analysis methods often struggle with the inherent ambiguity and uncertainty present in social media text, where opinions can be simultaneously positive, negative, and neutral. This paper proposes a novel neutrosophic-based approach to sentiment classification that addresses the...

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Main Authors: Raad A. Qasim, Sajjad abbas, Habeeb Noori Jumaah, Maher Khalaf Hussein, Huda E. Khalid
Format: Article
Language:English
Published: University of New Mexico 2025-07-01
Series:Neutrosophic Sets and Systems
Subjects:
Online Access:https://fs.unm.edu/NSS/37SocialMedia.pdf
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author Raad A. Qasim
Sajjad abbas
Habeeb Noori Jumaah
Maher Khalaf Hussein
Huda E. Khalid
author_facet Raad A. Qasim
Sajjad abbas
Habeeb Noori Jumaah
Maher Khalaf Hussein
Huda E. Khalid
author_sort Raad A. Qasim
collection DOAJ
description Traditional sentiment analysis methods often struggle with the inherent ambiguity and uncertainty present in social media text, where opinions can be simultaneously positive, negative, and neutral. This paper proposes a novel neutrosophic-based approach to sentiment classification that addresses the limitations of binary and ternary classification systems. By incorporating neutrosophic logic's three-valued framework (truth, indeterminacy, and falsity), our method better captures the nuanced nature of social media sentiment expressions. Experimental results on multiple social media datasets demonstrate significant improvements in classification accuracy, with our neutrosophic approach achieving 15% to 20% better performance in handling ambiguous and mixed-sentiment posts compared to conventional methods. The proposed framework shows particular effectiveness in processing sarcastic, ironic that are contextually dependent expressions common in social media platforms.
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series Neutrosophic Sets and Systems
spelling doaj-art-fdc2f235eb774d64bee9d22c2425a7902025-08-20T04:03:25ZengUniversity of New MexicoNeutrosophic Sets and Systems2331-60552331-608X2025-07-018858359710.5281/zenodo.15825643A Neutrosophic Approach to Improving Sentiment Classification Accuracy in Social Media AnalyticsRaad A. QasimSajjad abbasHabeeb Noori JumaahMaher Khalaf HusseinHuda E. KhalidTraditional sentiment analysis methods often struggle with the inherent ambiguity and uncertainty present in social media text, where opinions can be simultaneously positive, negative, and neutral. This paper proposes a novel neutrosophic-based approach to sentiment classification that addresses the limitations of binary and ternary classification systems. By incorporating neutrosophic logic's three-valued framework (truth, indeterminacy, and falsity), our method better captures the nuanced nature of social media sentiment expressions. Experimental results on multiple social media datasets demonstrate significant improvements in classification accuracy, with our neutrosophic approach achieving 15% to 20% better performance in handling ambiguous and mixed-sentiment posts compared to conventional methods. The proposed framework shows particular effectiveness in processing sarcastic, ironic that are contextually dependent expressions common in social media platforms.https://fs.unm.edu/NSS/37SocialMedia.pdfneutrosophic logicsentiment analysissocial media analyticsuncertainty environmentnatural language processing
spellingShingle Raad A. Qasim
Sajjad abbas
Habeeb Noori Jumaah
Maher Khalaf Hussein
Huda E. Khalid
A Neutrosophic Approach to Improving Sentiment Classification Accuracy in Social Media Analytics
Neutrosophic Sets and Systems
neutrosophic logic
sentiment analysis
social media analytics
uncertainty environment
natural language processing
title A Neutrosophic Approach to Improving Sentiment Classification Accuracy in Social Media Analytics
title_full A Neutrosophic Approach to Improving Sentiment Classification Accuracy in Social Media Analytics
title_fullStr A Neutrosophic Approach to Improving Sentiment Classification Accuracy in Social Media Analytics
title_full_unstemmed A Neutrosophic Approach to Improving Sentiment Classification Accuracy in Social Media Analytics
title_short A Neutrosophic Approach to Improving Sentiment Classification Accuracy in Social Media Analytics
title_sort neutrosophic approach to improving sentiment classification accuracy in social media analytics
topic neutrosophic logic
sentiment analysis
social media analytics
uncertainty environment
natural language processing
url https://fs.unm.edu/NSS/37SocialMedia.pdf
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