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Main Authors: Mai, Phan Quoc Hung, Nguyen, Quang Hung, Duong, Phuong Giang, Nguyen, Hong Hanh, Long, Nguyen Tuan
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.23524
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author Mai, Phan Quoc Hung
Nguyen, Quang Hung
Duong, Phuong Giang
Nguyen, Hong Hanh
Long, Nguyen Tuan
author_facet Mai, Phan Quoc Hung
Nguyen, Quang Hung
Duong, Phuong Giang
Nguyen, Hong Hanh
Long, Nguyen Tuan
contents In the field of education, understanding students' opinions through their comments is crucial, especially in the Vietnamese language, where resources remain limited. Existing educational datasets often lack domain relevance and student slang. To address these gaps, we introduce NEU-ESC, a new Vietnamese dataset for Educational Sentiment Classification and Topic Classification, curated from university forums, which offers more samples, richer class diversity, longer texts, and broader vocabulary. In addition, we explore multitask learning using encoder-only language models (BERT), in which we showed that it achieves performance up to 83.7% and 79.8% accuracy for sentiment and topic classification tasks. We also benchmark our dataset and model with other datasets and models, including Large Language Models, and discuss these benchmarks. The dataset is publicly available at: https://huggingface.co/datasets/hung20gg/NEU-ESC.
format Preprint
id arxiv_https___arxiv_org_abs_2506_23524
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle NEU-ESC: A Comprehensive Vietnamese dataset for Educational Sentiment analysis and topic Classification toward multitask learning
Mai, Phan Quoc Hung
Nguyen, Quang Hung
Duong, Phuong Giang
Nguyen, Hong Hanh
Long, Nguyen Tuan
Computation and Language
Artificial Intelligence
In the field of education, understanding students' opinions through their comments is crucial, especially in the Vietnamese language, where resources remain limited. Existing educational datasets often lack domain relevance and student slang. To address these gaps, we introduce NEU-ESC, a new Vietnamese dataset for Educational Sentiment Classification and Topic Classification, curated from university forums, which offers more samples, richer class diversity, longer texts, and broader vocabulary. In addition, we explore multitask learning using encoder-only language models (BERT), in which we showed that it achieves performance up to 83.7% and 79.8% accuracy for sentiment and topic classification tasks. We also benchmark our dataset and model with other datasets and models, including Large Language Models, and discuss these benchmarks. The dataset is publicly available at: https://huggingface.co/datasets/hung20gg/NEU-ESC.
title NEU-ESC: A Comprehensive Vietnamese dataset for Educational Sentiment analysis and topic Classification toward multitask learning
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2506.23524