基于多头注意力的端到端临床时间信息提取

Timothy Miller, S. Bethard, Dmitriy Dligach, G. Savova
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引用次数: 0

摘要

理解电子健康记录文本中的时间关系对于许多重要的下游临床应用是有价值的。自2017年临床TempEval以来,关于端到端时间关系提取系统的工作很少,大多数工作都集中在给出金标准事件和时间表达式的设置上。在这项工作中,我们在预训练的变压器编码器上使用了一种新的多头注意机制,使学习过程能够关注上下文化嵌入的多个方面。在域内和跨域设置中,我们的系统在百里香语料库上实现了广泛的最先进的结果。
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End-to-end clinical temporal information extraction with multi-head attention
Understanding temporal relationships in text from electronic health records can be valuable for many important downstream clinical applications. Since Clinical TempEval 2017, there has been little work on end-to-end systems for temporal relation extraction, with most work focused on the setting where gold standard events and time expressions are given. In this work, we make use of a novel multi-headed attention mechanism on top of a pre-trained transformer encoder to allow the learning process to attend to multiple aspects of the contextualized embeddings. Our system achieves state of the art results on the THYME corpus by a wide margin, in both the in-domain and cross-domain settings.
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