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Pro/Con: Neural Detection of Stance in Argumentative Opinions

机译:Pro / Con:论辩意见中姿势的神经检测

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摘要

Accurate information from both sides of the contemporary issues is known to be an 'antidote in confirmation bias'. While these types of information help the educators to improve their vital skills including critical thinking and open-mindedness, they are relatively rare and hard to find online. With the well-researched argumentative opinions (arguments) on controversial issues shared by Procon.org in a non-partisan format, detecting the stance of arguments is a crucial step to automate organizing such resources. We use a universal pre-trained language model with weight-dropped LSTM neural network to leverage the context of an argument for stance detection on the proposed dataset. Experimental results show that the dataset is challenging, however, utilizing the pretrained language model fine-tuned on context information yields a general model that beats the competitive baselines. We also provide analysis to find the informative segments of an argument to our stance detection model and investigate the relationship between the sentiment of an argument with its stance.
机译:来自当代问题双方的准确信息被称为“确认偏差的解药”。这些类型的信息可以帮助教育工作者提高他们的关键技能,包括批判性思维和思想开放的能力,但它们相对较少,并且很难在网上找到。借助Procon.org以无党派形式共享的,经过广泛研究的关于争议性问题的论点(论据),检测论点的立场是自动化组织此类资源的关键步骤。我们使用带有减重LSTM神经网络的通用预训练语言模型来利用参数上下文对提议的数据集进行姿态检测。实验结果表明,该数据集具有挑战性,但是,利用根据上下文信息进行微调的预训练语言模型,可以得到超越竞争基准的通用模型。我们还提供分析以找到我们立场检测模型的论点的信息性细分,并研究论点的情感与其立场之间的关系。

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