Recognizing Textual Inference in Mongolian Bar Exam Questions
Garmaabazar Khaltarkhuu,
Biligsaikhan Batjargal,
Akira Maeda
Abstract:This paper examines how to apply deep learning techniques to Mongolian bar exam questions. Several approaches that utilize eight different fine-tuned transformer models were demonstrated for recognizing textual inference in Mongolian bar exam questions. Among eight different models, the fine-tuned bert-base-multilingual-cased obtained the best accuracy of 0.7619. The fine-tuned bert-base-multilingual-cased was capable of recognizing “contradiction”, with a recall of 0.7857 and an F1 score of 0.7674; it recogni… Show more
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