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Argument Component Classification for Classroom Discussions

机译:Argument组件对课堂讨论的分类

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This paper focuses on argument component classification for transcribed spoken classroom discussions, with the goal of automatically classifying student utterances into claims, evidence, and warrants. We show that an existing method for argument component classification developed for another educationally-oriented domain performs poorly on our dataset. We then show that feature sets from prior work on argument mining for student essays and online dialogues can be used to improve performance considerably. We also provide a comparison between convolutional neural networks and recurrent neural networks when trained under different conditions to classify argument components in classroom discussions. While neural network models are not always able to outperform a logistic regression model, we were able to gain some useful insights: convolutional networks are more robust than recurrent networks both at the character and at the word level, and specificity information can help boost performance in multi-task training.
机译:本文重点介绍转录口语课堂讨论的参数组成分类,其目标是自动将学生发表归入索赔,证据和认股权证。我们表明,为另一个教育域开发的参数组件分类的现有方法在我们的数据集中执行不佳。然后,我们展示了从参数挖掘的事先工作的功能集可以用来大大提高性能。我们还在在不同条件下培训的卷积神经网络和经常性神经网络之间进行比较,以在课堂讨论中对参数组成分类。虽然神经网络模型并不总是能够优于逻辑回归模型,但我们能够获得一些有用的见解:卷积网络比在字符和字级别的经常性网络更强大,并且特定信息可以帮助提高性能多任务培训。

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