论文标题

基于对抗性学习的姿态分类器,用于共同19与19与19的健康政策

Adversarial Learning-based Stance Classifier for COVID-19-related Health Policies

论文作者

Xie, Feng, Zhang, Zhong, Zhao, Xuechen, Wang, Haiyang, Zou, Jiaying, Tian, Lei, Zhou, Bin, Tan, Yusong

论文摘要

持续的19日大流行造成了全球人的不可估量的损失。为了遏制病毒的传播并进一步减轻危机,已经发布了各种健康政策(例如,在家订单),随着用户转向社交媒体上的态度,他们引发了激烈的讨论。在本文中,我们考虑了有关大流行病的立场检测(即跨目标和零照片设置)的更现实的场景,并提出了一种基于对抗性的学习立场分类器,以自动识别公众对COVID-19与COVID相关的健康政策的态度。具体来说,我们采用对抗性学习,使模型可以对大量标记的数据进行训练,并从源主题中捕获可转移的知识,从而使具有稀疏标记数据的新兴健康政策概括。为了进一步增强模型的更深入的理解,我们将政策描述作为外部知识纳入模型。同时,设计了一个地理编码器,它鼓励模型捕获每个区域指定的未观察到的背景因素,然后将它们表示为非文本信息。我们评估了与共同19相关的健康策略的立场检测任务的广泛基线的性能,实验结果表明,我们提出的方法在跨目标和零摄影设置中都实现了最先进的性能。

The ongoing COVID-19 pandemic has caused immeasurable losses for people worldwide. To contain the spread of the virus and further alleviate the crisis, various health policies (e.g., stay-at-home orders) have been issued which spark heated discussions as users turn to share their attitudes on social media. In this paper, we consider a more realistic scenario on stance detection (i.e., cross-target and zero-shot settings) for the pandemic and propose an adversarial learning-based stance classifier to automatically identify the public's attitudes toward COVID-19-related health policies. Specifically, we adopt adversarial learning that allows the model to train on a large amount of labeled data and capture transferable knowledge from source topics, so as to enable generalize to the emerging health policies with sparse labeled data. To further enhance the model's deeper understanding, we incorporate policy descriptions as external knowledge into the model. Meanwhile, a GeoEncoder is designed which encourages the model to capture unobserved background factors specified by each region and then represent them as non-text information. We evaluate the performance of a broad range of baselines on the stance detection task for COVID-19-related health policies, and experimental results show that our proposed method achieves state-of-the-art performance in both cross-target and zero-shot settings.

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