On Learning Better Embeddings from Chinese Clinical Records: Study on Combining In-Domain and Out-Domain Data

Yaqiang Wang, Yunhui Chen, Hongping Shu, Yongguang Jiang
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Abstract

High quality word embeddings are of great significance to advance applications of biomedical natural language processing. In recent years, a surge of interest on how to learn good embeddings and evaluate embedding quality based on English medical text has become increasing evident, however a limited number of studies based on Chinese medical text, particularly Chinese clinical records, were performed. Herein, we proposed a novel approach of improving the quality of learned embeddings using out-domain data as a supplementary in the case of limited Chinese clinical records. Moreover, the embedding quality evaluation method was conducted based on Medical Conceptual Similarity Property. The experimental results revealed that selecting good training samples was necessary, and collecting right amount of out-domain data and trading off between the quality of embeddings and the training time consumption were essential factors for better embeddings.
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从中国临床病历中学习更好的嵌入:域内和域外数据结合的研究
高质量的词嵌入对推进生物医学自然语言处理的应用具有重要意义。近年来,人们对如何基于英文医学文本学习好的嵌入和评价嵌入质量的研究越来越感兴趣,然而,基于中文医学文本,特别是中文临床记录的研究却非常有限。在此,我们提出了一种新的方法,在有限的中国临床记录的情况下,使用域外数据作为补充来提高学习嵌入的质量。在此基础上,提出了基于医学概念相似属性的嵌入质量评价方法。实验结果表明,选择好的训练样本、收集适量的域外数据以及在嵌入质量和训练耗时之间进行权衡是提高嵌入效果的关键因素。
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