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What works and what does not: Classifier and feature analysis for argument mining

机译:什么有效和什么不是:争论挖掘的分类器和特征分析

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This paper offers a comparative analysis of the performance of different supervised machine learning methods and feature sets on argument mining tasks. Specifically, we address the tasks of extracting argumentative segments from texts and predicting the structure between those segments. Eight classifiers and different combinations of six feature types reported in previous work are evaluated. The results indicate that overall best performing features are the structural ones. Although the performance of classifiers varies depending on the feature combinations and corpora used for training and testing, Random Forest seems to be among the best performing classifiers. These results build a basis for further development of argument mining techniques and can guide an implementation of argument mining into different applications such as argument based search.
机译:本文提供了对论证挖掘任务不同监督机器学习方法的性能和特征集的比较分析。具体地,我们解决了从文本中提取争论段的任务,并预测这些段之间的结构。在以前的工作中报告的八种分类器和不同组合的六种特征类型进行了评估。结果表明,整体最佳性能特征是结构性。虽然分类器的性能取决于用于培训和测试的特征组合和语料,但随机森林似乎是最好的执行分类器之一。这些结果为进一步开发参数挖掘技术构建了一个基础,可以指导参数挖掘到基于Argument Search等不同应用程序的实现。

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