School of Geography, Earth and Environmental Sciences, University of Birmingham, Birmingham, United Kingdom.
Public Policy Program, University of North Carolina at Charlotte, Charlotte, NC, United States of America.
PLoS One. 2020 May 22;15(5):e0233660. doi: 10.1371/journal.pone.0233660. eCollection 2020.
Social media has become an emerging alternative to opinion polls for public opinion collection, while it is still posing many challenges as a passive data source, such as structurelessness, quantifiability, and representativeness. Social media data with geotags provide new opportunities to unveil the geographic locations of users expressing their opinions. This paper aims to answer two questions: 1) whether quantifiable measurement of public opinion can be obtained from social media and 2) whether it can produce better or complementary measures compared to opinion polls. This research proposes a novel approach to measure the relative opinion of Twitter users towards public issues in order to accommodate more complex opinion structures and take advantage of the geography pertaining to the public issues. To ensure that this new measure is technically feasible, a modeling framework is developed including building a training dataset by adopting a state-of-the-art approach and devising a new deep learning method called Opinion-Oriented Word Embedding. With a case study of tweets on the 2016 U.S. presidential election, we demonstrate the predictive superiority of our relative opinion approach and we show how it can aid visual analytics and support opinion predictions. Although the relative opinion measure is proved to be more robust than polling, our study also suggests that the former can advantageously complement the latter in opinion prediction.
社交媒体已经成为民意收集的一种新兴替代民意调查的方法,尽管它作为一个被动的数据来源,仍然存在许多挑战,如无结构性、可量化性和代表性。带有地理标记的社交媒体数据为揭示用户表达意见的地理位置提供了新的机会。本文旨在回答两个问题:1)是否可以从社交媒体中获得可量化的民意测量;2)与民意调查相比,它是否能产生更好或互补的措施。本研究提出了一种新的方法来衡量 Twitter 用户对公共问题的相对意见,以适应更复杂的意见结构,并利用与公共问题相关的地理信息。为了确保这个新的测量方法在技术上是可行的,我们开发了一个建模框架,包括通过采用最先进的方法构建一个训练数据集和设计一种新的深度学习方法,称为面向观点的单词嵌入。通过对 2016 年美国总统选举的推文进行案例研究,我们展示了我们的相对意见方法的预测优势,以及它如何帮助视觉分析和支持意见预测。虽然相对意见测量被证明比民意调查更稳健,但我们的研究还表明,前者可以在民意预测方面有利地补充后者。