Natural Language Transfer Learning for Physiological Textual Similarity

Vasudev Awatramani, Pooja Gupta
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引用次数: 2

Abstract

Understanding textual and language information has always been one of the primary research concerns of artificial intelligence, as the crucial function it plays in communication. The biomedical domain has experienced a surge in the availability of data in the form of text. This collection of information has opened avenues to a plethora of automated applications. In this work, the nascent technique of Natural Language Transfer Learning is employed for Physiological Computing. This methodology measures the semantic similarity between medical text utilising pre-trained language models such as BERT and RoBERTa. Using the proposed methodology 90% accuracy over the BioSSES dataset has been obtained. Henceforth, transfer learning proves to be an effectual strategy for NLP tasks that belong to varied fields.
生理文本相似度的自然语言迁移学习
理解文本和语言信息一直是人工智能研究的重点之一,因为它在通信中起着至关重要的作用。在生物医学领域,文本形式的数据可用性激增。这一信息集合为大量自动化应用程序开辟了道路。在这项工作中,自然语言迁移学习的新兴技术被用于生理计算。这种方法利用预训练的语言模型(如BERT和RoBERTa)来测量医学文本之间的语义相似性。使用所提出的方法,在BioSSES数据集上获得了90%的准确率。因此,迁移学习被证明是一种适用于不同领域的NLP任务的有效策略。
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