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BERT-based model for Vietnamese Fact Verification Dataset

1 March 2025
Bao Tran
T. N. Khanh
Khang Nguyen Tuong
Thien Dang
Quang Nguyen
Nguyen T. Thinh
Vo T. Hung
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Abstract

The rapid advancement of information and communication technology has facilitated easier access to information. However, this progress has also necessitated more stringent verification measures to ensure the accuracy of information, particularly within the context of Vietnam. This paper introduces an approach to address the challenges of Fact Verification using the Vietnamese dataset by integrating both sentence selection and classification modules into a unified network architecture. The proposed approach leverages the power of large language models by utilizing pre-trained PhoBERT and XLM-RoBERTa as the backbone of the network. The proposed model was trained on a Vietnamese dataset, named ISE-DSC01, and demonstrated superior performance compared to the baseline model across all three metrics. Notably, we achieved a Strict Accuracy level of 75.11\%, indicating a remarkable 28.83\% improvement over the baseline model.

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@article{tran2025_2503.00356,
  title={ BERT-based model for Vietnamese Fact Verification Dataset },
  author={ Bao Tran and T. N. Khanh and Khang Nguyen Tuong and Thien Dang and Quang Nguyen and Nguyen T. Thinh and Vo T. Hung },
  journal={arXiv preprint arXiv:2503.00356},
  year={ 2025 }
}
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