Beyond Traditional Classifiers: Evaluating Large Language Models for Robust Hate Speech Detection
Barakat, Basel and Jaf, Sardar (2025) Beyond Traditional Classifiers: Evaluating Large Language Models for Robust Hate Speech Detection. Computation, 13 (8). ISSN 2079-3197
| Item Type: | Article |
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Abstract
Hate speech detection remains a significant challenge due to the nuanced and context-dependent nature of hateful language. Traditional classifiers, trained on specialized corpora, often struggle to accurately identify subtle or manipulated hate speech. This paper explores the potential of utlizig large language models (LLMs) to address these limitations. By leveraging their extensive training on diverse text, LLMs demonstrate a superior ability to understand context, which is crucial for effective hate speech detection. We conduct a comprehensive evaluation of various LLMs on both binary and multi-label hate speech datasets to assess their performance. Our findings aim to clarify the extent to which LLMs can enhance hate speech classification accuracy, particularly in complex and challenging cases.
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More Information
| Uncontrolled Keywords: hate speech detection; large language models (LLMs); context understanding; binary hate speech datasets; multi-label hate speech datasets, classification accuracy |
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| Depositing User: Sardar Jaf |
Identifiers
| Item ID: 19312 |
| Identification Number: 10.3390/computation13080196 |
| ISSN: 2079-3197 |
| URI: http://sure.sunderland.ac.uk/id/eprint/19312 | Official URL: https://susy.mdpi.com/user/manuscripts/review_info... |
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Catalogue record
| Date Deposited: 22 Oct 2025 15:26 |
| Last Modified: 22 Oct 2025 15:26 |
| Author: |
Basel Barakat
|
| Author: |
Sardar Jaf
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| Author: | Basel Barakat |
| Author: | Sardar Jaf |
University Divisions
Faculty of Business and Technology > School of Computer Science and EngineeringSubjects
Computing > CybersecurityComputing > Artificial Intelligence
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