基于知识图的医学概念嵌入和预训练语言模型的内在测试

Claudio Aracena, F. Villena, Matías Rojas, J. Dunstan
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引用次数: 3

摘要

使用从大型数据源创建的语言模型提高了几个基于深度学习的架构的性能,在几个NLP外部任务中获得了最先进的结果。然而,很少有研究涉及创建内在测试,使我们能够在获得上下文化嵌入时比较不同语言模型的质量。当在非英语语言的特定领域工作时,这种差距会更大。本文提出了一种新颖的基于图形的内在测试,使我们能够测量西班牙语临床和生物医学领域中不同语言模型的质量。我们的结果表明,我们的内在测试在临床和生物医学语言模型上的表现优于一般的测试。此外,它与使用探测模型进行上下文化嵌入的NER任务的更好结果相关。我们希望我们的工作能够帮助临床NLP研究界评估和比较其他语言的新语言模型,并找到最适合解决下游任务的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Knowledge-Graph-Based Intrinsic Test for Benchmarking Medical Concept Embeddings and Pretrained Language Models
Using language models created from large data sources has improved the performance of several deep learning-based architectures, obtaining state-of-the-art results in several NLP extrinsic tasks. However, little research is related to creating intrinsic tests that allow us to compare the quality of different language models when obtaining contextualized embeddings. This gap increases even more when working on specific domains in languages other than English. This paper proposes a novel graph-based intrinsic test that allows us to measure the quality of different language models in clinical and biomedical domains in Spanish. Our results show that our intrinsic test performs better for clinical and biomedical language models than a general one. Also, it correlates with better outcomes for a NER task using a probing model over contextualized embeddings. We hope our work will help the clinical NLP research community to evaluate and compare new language models in other languages and find the most suitable models for solving downstream tasks.
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