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Extending NegEx with Kernel Methods for Negation Detection in Clinical Text

机译:使用内核方法扩展NegEx以在临床文本中进行负值检测

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摘要

NegEx is a popular rule-based system used to identify negated concepts in clinical notes. This system has been reported to perform very well by numerous studies in the past. In this paper, we demonstrate the use of kernel methods to extend the performance of NegEx. A kernel leveraging the rules of NegEx and its output as features, performs as well as the rule-based system. An improvement in performance is achieved if this kernel is coupled with a bag of words kernel. Our experiments show that kernel methods outperform the rule-based system, when evaluated within and across two different open datasets. We also present the results of a semi-supervised approach to the problem, which improves performance on the data.
机译:NegEx是一种流行的基于规则的系统,用于识别临床记录中的否定概念。过去的大量研究表明,该系统的性能非常好。在本文中,我们演示了使用内核方法来扩展NegEx的性能。利用NegEx规则及其输出作为功能的内核的性能与基于规则的系统一样好。如果将此内核与一袋单词内核结合使用,则可以提高性能。我们的实验表明,当在两个不同的开放数据集中进行评估时,内核方法的性能优于基于规则的系统。我们还介绍了针对该问题的半监督方法的结果,该方法可提高数据的性能。

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