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arxiv:2606.29614

Do We Still Need Fine Tuning? Turkish Sentiment Analysis in the Era of Large Language Model

Published on Jun 28
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Abstract

Supervised fine-tuning remains superior to prompt-based approaches for Turkish sentiment analysis, particularly when handling nuanced neutral classifications across multi-class tasks.

This study examines whether supervised fine-tuning remains necessary for Turkish sentiment analysis in the era of large language models. We compare classical machine learning methods, fine-tuned pretrained language models, and prompted large language models on a Turkish e-commerce review dataset with negative, neutral, and positive labels. Fine-tuned BERTurk models perform best overall and outperform all prompted large language models in the full three-class task. The neutral class emerges as the main difficulty: while several large language models are much more competitive in binary positive--negative classification, they degrade substantially in the three-class setting by collapsing neutral reviews into polarized categories. The findings suggest that, in realistic Turkish sentiment classification, prompted large language models do not yet match supervised fine-tuning in the zero-shot setting, and that including the neutral class is crucial for robust evaluation.

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Fine-tuned BERTurk models perform best overall and outperform all prompted large language models in the full three-class task

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