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What makes a convincing argument? Empirical analysis and detecting attributes of convincingness in Web argumentation

机译:是什么让人说服力的论点? Web论证中令人信服的实证分析与检测属性

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This article tackles a new challenging task in computational argumentation. Given a pair of two arguments to a certain controversial topic, we aim to directly assess qualitative properties of the arguments in order to explain why one argument is more convincing than the other one. We approach this task in a fully empirical manner by annotating 26k explanations written in natural language. These explanations describe convincingness of arguments in the given argument pair, such as their strengths or flaws. We create a new crowd-sourced corpus containing 9,111 argument pairs, multi-labeled with 17 classes, which was cleaned and curated by employing several strict quality measures. We propose two tasks on this data set, namely (1) predicting the full label distribution and (2) classifying types of flaws in less convincing arguments. Our experiments with feature-rich SVM learners and Bidirectional LSTM neural networks with convolution and attention mechanism reveal that such a novel fine-grained analysis of Web argument convincingness is a very challenging task. We release the new corpus UKPConvArg2 and the accompanying software under permissive licenses to the research community.
机译:本文在计算论证中解决了一个新的具有挑战性的任务。给出了一对有争议的话题的两个论点,我们的目标是直接评估参数的定性属性,以解释为什么一个论点比另一个论点更令人信服。通过用自然语言编写的26K解释,以完全经验的方式接近此任务。这些解释描述了给定的参数对中的参数的令人信服,例如他们的优势或缺陷。我们创建了一个包含9,111个参数对的新人群体语料库,用17个课程多标签,通过采用几种严格的质量措施来清洁和策划。我们在此数据集上提出了两个任务,即(1)预测完整标签分发和(2)在不太令人信服的参数中进行分类类型的缺陷类型。我们的实验,具有丰富的SVM学习者和双向LSTM神经网络,具有卷积和关注机制,表明这种新颖的细粒度的Web参数令人信服分析是一个非常具有挑战性的任务。我们在允许许可证中发布了新的Corpus UkpConvarg2和伴随的软件。

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