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.
翻译:为了控制病毒的传播并进一步缓解危机,我们发布了各种保健政策(如在家停留令),在用户转向社交媒体交流其态度时引发了热烈的讨论。在本文件中,我们考虑对流行病采取更现实的立点检测方案(即交叉目标和零射环境),并提出一个以对抗性学习为基础的立场分类器,以自动确定公众对与COVID-19有关的卫生政策的态度。具体地说,我们采用了对抗性学习方法,使该模式能够培训大量贴标签的数据,并从源主题中获取可转让的知识,以便能够以少贴标签的数据概括新出现的卫生政策。为了进一步加深对模式的理解,我们将政策描述作为外部知识纳入模型。与此同时,我们设计了一个GeoEncocoder模型,鼓励模型捕捉每个区域所指定的未察觉的背景因素,然后将它们作为非文字信息。我们评估了一系列关于立场检测基准的绩效基准的绩效基准和与COVI-19目标相关的标准,我们提出了实现与COVI-19目标相关的实验性健康政策。