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Domain Adaptation for Disease Phrase Matching with Adversarial Networks

机译:疾病短语与对抗网络匹配的域改性

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With the development of medical information management, numerous medical data are being classified, indexed, and searched in various systems. Disease phrase matching, i.e., deciding whether two given disease phrases interpret each other, is a basic but crucial preprocessing step for the above tasks. Being capable of relieving the scarceness of annotations, domain adaptation is generally considered useful in medical systems. However, efforts on applying it to phrase matching remain limited. This paper presents a domain-adaptive matching network for disease phrases. Our network achieves domain adaptation by adversarial training, i.e., preferring features indicating whether the two phrases match, rather than which domain they come from. Experiments suggest that our model has the best performance among the very few non-adaptive or adaptive methods that can benefit from out-of-domain annotations.
机译:随着医疗信息管理的发展,众多医疗数据正在分类,索引和在各种系统中搜索。疾病短语匹配,即决定两个给定的疾病短语是否彼此解释,是上述任务的基本但重要的预处理步骤。能够缓解注释的稀缺性,通常认为在医疗系统中的域改性。但是,努力将其应用于匹配匹配仍然有限。本文提出了一种用于疾病短语的域 - 自适应匹配网络。我们的网络通过对抗性培训实现域适应,即,更倾向于指示两个短语是否匹配的功能,而不是它们来自的域。实验表明,我们的模型具有极少的非自适应或自适应方法中的最佳性能,可以从域外注释中受益。

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