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PICO Extraction by combining the robustness of machine-learning methods with the rule-based methods

机译:通过将机器学习方法的鲁棒性与基于规则的方法相结合来提取微微提取

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machine-learning methods (MLMs) are robust methods in the extraction of the information; they have been also used in the extraction of PICO elements in order to answer clinical questions; MLMs are only used at coarse-grained level in PICO extraction, because of lack of training corpora for PICO at the fine-grained level. Coarse-grained level cannot explore the semantics within the sentence for use as a means of relevance between different answers. We propose a hybrid approach combining the robustness of MLMs and the fine grained level of RBMs to enhance PICO extraction process and facilitate the validity and the pertinence of the answers to clinic questions formulated with the PICO framework.
机译:机器学习方法(MLMS)是在信息提取中的鲁棒方法;他们也被用于提取微微元素,以应对临床问题; MLMS仅在Pico提取中的粗粒度水平上使用,因为缺乏在细粒度水平的微微培训。粗粒度级别无法探索句子中的语义,以便用作不同答案之间的相关手段。我们提出了一种混合方法,将MLM的鲁棒性与RBMS的鲁棒性相结合,以增强微微提取过程,并促进与微微框架制定的诊所问题答案的有效性和隐秘。

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