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Evidence Type Classification in Randomized Controlled Trials

机译:随机对照试验中的证据类型分类

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Randomized Controlled Trials (RCT) are a common type of experimental studies in the medical domain for evidence-based decision making. The ability to automatically extract the arguments proposed therein can be of valuable support for clinicians and practitioners in their daily evidence-based decision making activities. Given the peculiarity of the medical domain and the required level of detail, standard approaches to argument component detection in argument(ation) mining are not finegrained enough to support such activities. In this paper, we introduce a new sub-task of the argument component identification task: evidence type classification. To address it, we propose a supervised approach and we test it on a set of RCT abstracts on different medical topics.
机译:随机对照试验(RCT)是医疗领域的常见实验研究,用于基于证据的决策。自动提取其中提出的论据的能力可以在日常证据的决策活动中对临床医生和从业者进行有价值的支持。鉴于医疗领域的特殊性和所需的细节水平,论证组分检测的标准方法(ATION)采矿的方法不足以支持此类活动。在本文中,我们介绍了Argument组件识别任务的新子任务:证据类型分类。为了解决它,我们提出了一种监督方法,我们在不同医疗主题的一套RCT摘要上测试它。

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