从Twitter获取对社会问题的热情和支持信号

Shubhanshu Mishra, J. Diesner
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引用次数: 8

摘要

社交媒体使组织能够了解用户对其在线产品的评价,并与潜在受众进行互动。社交媒体还允许个人用户和公众表达他们对广泛话题的热情、支持或缺乏支持。在本文中,我们分析了在热情(标签:热情,被动)和支持(标签:支持,非支持)的维度上标记tweet的先验框架的鲁棒性。我们调查了关于国家橄榄球联盟网络欺凌、LGBT权利和慢性创伤性脑病(CTE)三个主题的推文集合中的注释质量。我们分别训练了达到>70%和80% F1分数的模型来对推文进行热情和支持分类。我们评估了基于文本的热情和支持信号如何根据不同的注释者而变化。最后,我们提出并演示了一种基于网络分析的方法,用于将带注释的推文与帐户和标签提及网络相结合。这一步有助于识别与所考虑的类别(热情和支持)相关的顶级账户和标签。我们的工作为标准情感分析和姿态检测提供了一种替代或补充的分类模式和预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Capturing Signals of Enthusiasm and Support Towards Social Issues from Twitter
Social media enables organizations to learn what users say about their products online, and to engage with their potential audiences. Social media has also been allowing individual users and the public to signal their enthusiasm, support, or lack thereof for a broad range of topics. In this paper, we analyze the robustness of a prior framework for tagging tweets across the dimensions of enthusiasm (labels: enthusiastic, passive) and support (labels: supportive, non-supportive). We investigate the quality of annotations in a collection of tweets about three topics, namely, cyberbullying, LGBT rights, and Chronic Traumatic Encephalopathy (CTE) in the National Football League. We train models that achieve >70% and 80% F1 score for classifying tweets for enthusiasm and support, respectively. We assess how text-based signals of enthusiasm and support vary depending on the different annotators. Finally, we propose and demonstrate a network analysis-based approach for combining the annotated tweets with account and hashtag mention networks. This step helps to identify top accounts and hashtags related to the considered categories (enthusiasm and support). Our work offers an alternative or supplemental classification schema and prediction model to standard sentiment analysis and stance detection.
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