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Knowledge-rich temporal relation identification and classification in clinical notes

机译:临床笔记中知识丰富的时间关系识别和分类

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Motivation: We examine the task of temporal relation classification for the clinical domain. Our approach to this task departs from existing ones in that it is (i) ‘knowledge-rich', employing sophisticated knowledge derived from discourse relations as well as both domain-independent and domain-dependent semantic relations, and (ii) ‘hybrid', combining the strengths of rule-based and learning-based approaches. Evaluation results on the i2b2 Clinical Temporal Relations Challenge corpus show that our approach yields a 17–24% and 8–14% relative reduction in error over a state-of-the-art learning-based baseline system when gold-standard and automatically identified temporal relations are used, respectively. Database URL: http://www.hlt.utdallas.edu/~jld082000/temporal-relations/
机译:动机:我们研究了临床领域的时间关系分类的任务。我们处理此任务的方法与现有方法不同,它是(i)“知识丰富”,采用从话语关系以及与领域无关和与领域有关的语义关系中派生的复杂知识,以及(ii)“混合” ,结合了基于规则和基于学习的方法的优势。对i2b2临床时际关系挑战语料库的评估结果表明,相对于基于学习的最先进基准系统,我们的方法在达到金标准并自动识别后,相对误差降低了17–24%和8–14%分别使用时间关系。数据库网址:http://www.hlt.utdallas.edu/~jld082000/temporal-relations/

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