Dr.Emotion: Disentangled Representation Learning for Emotion Analysis on Social Media to Improve Community Resilience in the COVID-19 Era and Beyond

Mingxuan Ju, Wei Song, Shiyu Sun, Yanfang Ye, Yujie Fan, Shifu Hou, K. Loparo, Liang Zhao
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引用次数: 8

Abstract

During the pandemic caused by coronavirus disease (COVID-19), social media has played an important role by enabling people to discuss their experiences and feelings of this global crisis. To help combat the prolonged pandemic that has exposed vulnerabilities impacting community resilience, in this paper, based on our established large-scale COVID-19 related social media data, we propose and develop an integrated framework (named Dr.Emotion) to learn disentangled representations of social media posts (i.e., tweets) for emotion analysis and thus to gain deep insights into public perceptions towards COVID-19. In Dr.Emotion, for given social media posts, we first post-train a transformer-based model to obtain the initial post embeddings. Since users may implicitly express their emotions in social media posts which could be highly entangled with other descriptive information in the post content, to address this challenge for emotion analysis, we propose an adversarial disentangler by integrating emotion-independent (i.e., sentiment-neutral) priors of the posts generated by another post-trained transformer-based model to separate and disentangle the implicitly encoded emotions from the content in latent space for emotion classification at the first attempt. Extensive experimental studies are conducted to fully evaluate Dr.Emotion and promising results demonstrate its performance in emotion analysis by comparison with the state-of-the-art baseline methods. By exploiting our developed Dr.Emotion, we further perform emotion analysis over a large number of social media posts and provide in-depth investigation from both temporal and geographical perspectives, based on which additional work can be conducted to extract and transform the constructive ideas, experiences and support into actionable information to improve community resilience in responses to a variety of crises created by COVID-19 and well beyond.
Dr.Emotion:社交媒体情感分析的解纠缠表征学习,以提高COVID-19时代及以后的社区复原力
在由冠状病毒病(COVID-19)引起的大流行期间,社交媒体发挥了重要作用,使人们能够讨论他们对这场全球危机的经历和感受。为了帮助应对暴露出影响社区复原力的脆弱性的长期大流行,本文基于我们已建立的与COVID-19相关的大规模社交媒体数据,我们提出并开发了一个集成框架(名为Dr.Emotion),以学习社交媒体帖子(即推文)的解耦表示,用于情绪分析,从而深入了解公众对COVID-19的看法。在Dr.Emotion中,对于给定的社交媒体帖子,我们首先对基于transformer的模型进行后训练,以获得初始帖子嵌入。由于用户可能会在社交媒体帖子中含蓄地表达他们的情绪,这些情绪可能与帖子内容中的其他描述性信息高度纠缠,为了解决情绪分析的这一挑战,我们提出了一种对抗性解纠缠器,通过整合情绪独立(即,另一个基于后训练的基于变换的模型生成的帖子的情感中性先验,在潜在空间中将隐含编码的情感从内容中分离出来,进行情感分类。我们进行了大量的实验研究,以充分评估Dr.Emotion,并通过与最先进的基线方法进行比较,证明了其在情绪分析中的表现。通过利用我们开发的情感博士,我们进一步对大量社交媒体帖子进行情感分析,并从时间和地理角度进行深入调查,在此基础上,我们可以开展额外的工作,提取建设性的想法、经验和支持,并将其转化为可操作的信息,以提高社区应对COVID-19引发的各种危机的复原力。
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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