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Domain adaptation in practice: Lessons from a real-world information extraction pipeline

机译:实践中的域适应:现实世界信息提取管道的课程

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Advances in transfer learning and domain adaptation have raised hopes that once-challenging NLP tasks are ready to be put to use for sophisticated information extraction needs. In this work, we describe an effort to do just that - combining state-of-the-art neural methods for negation detection, document time relation extraction, and aspectual link prediction, with the eventual goal of extracting drug timelines from electronic health record text. We train on the THYME colon cancer corpus and test on both the THYME brain cancer corpus and an internal corpus, and show that performance of the combined systems is unacceptable despite good performance of individual systems. Although domain adaptation shows improvements on each individual system, the model selection problem is a barrier to improving overall pipeline performance.
机译:转移学习和域适应的进步提出了希望曾经充满挑战的NLP任务准备用于用于复杂的信息提取需求。 在这项工作中,我们描述了努力,即结合最先进的神经方法进行否定检测,文档时间关系提取和方面的链路预测,其中从电子健康记录文本中提取药物时间表的最终目标 。 我们培养百里香结肠癌语料库并测试百里香脑癌语料库和内部语料库,并且尽管各个系统的性能良好,但组合系统的性能是不可接受的。 虽然域适应显示每个单独的系统的改进,但模型选择问题是提高整体管道性能的障碍。

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