从姿态的不平衡到姿态的层次表示与检测

Qiang Zhang, Shangsong Liang, Aldo Lipani, Z. Ren, Emine Yilmaz
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引用次数: 25

摘要

姿态检测由于其在假新闻检测中的重要性而引起了研究界越来越多的兴趣。姿态检测的目标是将主体对客体的总体位置分为四类:同意、不同意、讨论和不相关。当前用于姿态检测的机器学习模型面临的主要问题之一是由这些类之间严重的类不平衡引起的。因此,大多数模型不能正确地对属于少数类的实例进行分类。在本文中,我们通过提出这些类的分层表示来解决这个问题,该表示将同意类,不同意类和讨论类组合在一个新的相关类下。此外,我们提出了一个两层神经网络,该网络从这种分层表示中学习,并使用最大平均差异正则化器控制两层之间的误差传播。与传统的四向分类器相比,该模型具有两个优点:(1)层次结构减轻了类不平衡问题;(2)正则化使模型能够更好地区分相关和不相关的立场。广泛的实验证明了所提出的姿态检测模型的最先进的精度性能。
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From Stances' Imbalance to Their HierarchicalRepresentation and Detection
Stance detection has gained increasing interest from the research community due to its importance for fake news detection. The goal of stance detection is to categorize an overall position of a subject towards an object into one of the four classes: agree, disagree, discuss, and unrelated. One of the major problems faced by current machine learning models used for stance detection is caused by a severe class imbalance among these classes. Hence, most models fail to correctly classify instances that fall into minority classes. In this paper, we address this problem by proposing a hierarchical representation of these classes, which combines the agree, disagree, and discuss classes under a new related class. Further, we propose a two-layer neural network that learns from this hierarchical representation and controls the error propagation between the two layers using the Maximum Mean Discrepancy regularizer. Compared with conventional four-way classifiers, this model has two advantages: (1) the hierarchical architecture mitigates the class imbalance problem; (2) the regularization makes the model to better discern between the related and unrelated stances. An extensive experimentation demonstrates state-of-the-art accuracy performance of the proposed model for stance detection.
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