Identifying informative tweets during a pandemic via a topic-aware neural language model.

IF 2.7 3区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS World Wide Web-Internet and Web Information Systems Pub Date : 2023-01-01 DOI:10.1007/s11280-022-01034-1
Wang Gao, Lin Li, Xiaohui Tao, Jing Zhou, Jun Tao
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引用次数: 3

Abstract

Every epidemic affects the real lives of many people around the world and leads to terrible consequences. Recently, many tweets about the COVID-19 pandemic have been shared publicly on social media platforms. The analysis of these tweets is helpful for emergency response organizations to prioritize their tasks and make better decisions. However, most of these tweets are non-informative, which is a challenge for establishing an automated system to detect useful information in social media. Furthermore, existing methods ignore unlabeled data and topic background knowledge, which can provide additional semantic information. In this paper, we propose a novel Topic-Aware BERT (TABERT) model to solve the above challenges. TABERT first leverages a topic model to extract the latent topics of tweets. Secondly, a flexible framework is used to combine topic information with the output of BERT. Finally, we adopt adversarial training to achieve semi-supervised learning, and a large amount of unlabeled data can be used to improve inner representations of the model. Experimental results on the dataset of COVID-19 English tweets show that our model outperforms classic and state-of-the-art baselines.

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通过主题感知神经语言模型识别大流行期间的信息性推文。
每一种流行病都影响到世界各地许多人的现实生活,并导致可怕的后果。最近,社交媒体平台上公开分享了许多关于COVID-19大流行的推文。对这些推文的分析有助于应急响应组织确定任务的优先级并做出更好的决策。然而,这些推文大多是非信息性的,这对建立一个自动化系统来检测社交媒体中有用的信息是一个挑战。此外,现有方法忽略了未标记数据和主题背景知识,这可以提供额外的语义信息。在本文中,我们提出了一个新的主题感知BERT (TABERT)模型来解决上述挑战。TABERT首先利用主题模型提取推文的潜在主题。其次,采用灵活的框架将主题信息与BERT的输出结合起来。最后,我们采用对抗性训练来实现半监督学习,并且可以使用大量的未标记数据来改进模型的内部表示。在COVID-19英文推文数据集上的实验结果表明,我们的模型优于经典和最先进的基线。
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来源期刊
World Wide Web-Internet and Web Information Systems
World Wide Web-Internet and Web Information Systems 工程技术-计算机:软件工程
CiteScore
7.30
自引率
10.80%
发文量
131
审稿时长
6 months
期刊介绍: World Wide Web: Internet and Web Information Systems (WWW) is an international, archival, peer-reviewed journal which covers all aspects of the World Wide Web, including issues related to architectures, applications, Internet and Web information systems, and communities. The purpose of this journal is to provide an international forum for researchers, professionals, and industrial practitioners to share their rapidly developing knowledge and report on new advances in Internet and web-based systems. The journal also focuses on all database- and information-system topics that relate to the Internet and the Web, particularly on ways to model, design, develop, integrate, and manage these systems. Appearing quarterly, the journal publishes (1) papers describing original ideas and new results, (2) vision papers, (3) reviews of important techniques in related areas, (4) innovative application papers, and (5) progress reports on major international research projects. Papers published in the WWW journal deal with subjects directly or indirectly related to the World Wide Web. The WWW journal provides timely, in-depth coverage of the most recent developments in the World Wide Web discipline to enable anyone involved to keep up-to-date with this dynamically changing technology.
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