从未标记数据中学习临床语义文本相似度

Yuxia Wang, K. Verspoor, Timothy Baldwin
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引用次数: 21

摘要

领域预训练后的任务微调已经成为NLP任务的标准范式,但需要域内标记数据进行任务微调。为了克服这个问题,我们建议通过从一般模型中分配伪标签来利用领域未标记的数据。我们在两个临床STS数据集上对该方法进行了评估,在N2C2-STS上r= 0.80。进一步的研究表明,如果未标记句子对的数据分布更接近测试数据,我们可以获得更好的性能。通过利用大型通用STS数据集和小规模域内训练数据,我们得到了r= 0.90的进一步改进,这是一个新的SOTA。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning from Unlabelled Data for Clinical Semantic Textual Similarity
Domain pretraining followed by task fine-tuning has become the standard paradigm for NLP tasks, but requires in-domain labelled data for task fine-tuning. To overcome this, we propose to utilise domain unlabelled data by assigning pseudo labels from a general model. We evaluate the approach on two clinical STS datasets, and achieve r= 0.80 on N2C2-STS. Further investigation reveals that if the data distribution of unlabelled sentence pairs is closer to the test data, we can obtain better performance. By leveraging a large general-purpose STS dataset and small-scale in-domain training data, we obtain further improvements to r= 0.90, a new SOTA.
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