TotalDefMeme: A Multi-Attribute Meme dataset on Total Defence in Singapore

Nirmalendu Prakash, Ming Shan Hee, R. Lee
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引用次数: 3

Abstract

Total Defence is a defence policy combining and extending the concept of military defence and civil defence. While several countries have adopted total defence as their defence policy, very few studies have investigated its effectiveness. With the rapid proliferation of social media and digitalisation, many social studies have been focused on investigating policy effectiveness through specially curated surveys and questionnaires either through digital media or traditional forms. However, such references may not truly reflect the underlying sentiments about the target policies or initiatives of interest. People are more likely to express their sentiment using communication mediums such as starting topic thread on forums or sharing memes on social media. Using Singapore as a case reference, this study aims to address this research gap by proposing TotalDefMeme, a large-scale multi-modal and multi-attribute meme dataset that captures public sentiments toward Singapore's Total Defence policy. Besides supporting social informatics and public policy analysis of the Total Defence policy, TotalDefMeme can also support many downstream multi-modal machine learning tasks, such as aspect-based stance classification and multi-modal meme clustering. We perform baseline machine learning experiments on TotalDefMeme and evaluate its technical validity, and present possible future interdisciplinary research directions and application scenarios using the dataset as a baseline.
TotalDefMeme:新加坡全面防御的多属性Meme数据集
全面防御是军事防御和民防概念的结合和延伸。虽然有几个国家采用全面防御作为其国防政策,但很少有研究调查其有效性。随着社交媒体和数字化的迅速普及,许多社会研究都侧重于通过数字媒体或传统形式,通过特别策划的调查和问卷来调查政策有效性。然而,这样的参考可能并不真实地反映对目标政策或感兴趣的举措的潜在情绪。人们更倾向于使用交流媒介来表达自己的情绪,比如在论坛上发起话题,或者在社交媒体上分享表情包。以新加坡为例,本研究旨在通过提出TotalDefMeme来解决这一研究缺口,TotalDefMeme是一个大规模的多模态和多属性模因数据集,捕捉公众对新加坡全面防御政策的情绪。除了支持全面防御政策的社会信息学和公共政策分析外,TotalDefMeme还可以支持许多下游多模态机器学习任务,如基于方面的立场分类和多模态模因聚类。我们在TotalDefMeme上进行了基线机器学习实验,并评估了其技术有效性,并以该数据集为基线,提出了未来可能的跨学科研究方向和应用场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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