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YUN-HPCC at SemEval-2018 Task 12: The Argument Reasoning Comprehension Task Using a Bi-directional LSTM with Attention Model

机译:Yun-HPCC在Semeval-2018任务12:使用与注意模型的双向LSTM的参数推理理解任务

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An argument is divided into two parts, the claim and the reason. To obtain a clearer conclusion, some additional explanation is required. In this task, the explanation-s are called warrants. This paper introduces a bi-directional long short term memory (Bi-LSTM) with an attention model to select a correct warrant from two to explain an argument. We address this question as a question-answering system. For each warrant, the model produces a probability that it is correct. Finally, the system chooses the highest correc-t probability as the answer. Ensemble learning is used to enhance the performance of the model. Among all of the participants, we ranked 15th on the test results.
机译:一个论点分为两部分,索赔和原因。要获得更清晰的结论,需要一些额外的解释。在此任务中,解释-S称为令。本文介绍了一个双向长期内存(Bi-LSTM),带有注意模型,以从两个中选择正确的权证来解释一个论点。我们将此问题作为问答系统。对于每个保证,该模型产生了正确的概率。最后,系统选择最高的Corec-T概率作为答案。合奏学习用于增强模型的性能。在所有参与者中,我们在测试结果上排名第15。

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