Panos Kostakos, Abhinay Pandya, Olga Kyriakouli, M. Oussalah
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引用次数: 4
Abstract
Inferring demographic intelligence from unlabeled social media data is an actively growing area of research, challenged by low availability of ground truth annotated training corpora. High-accuracy approaches for labeling demographic traits of social media users employ various heuristics that do not scale up and often discount non-English texts and marginalized users. First, we present a framework for inferring the demographic attributes of Twitter users from their profile pictures (avatars) using the Microsoft Azure Face API. Second, we measure the inter-rater agreement between annotations made using our framework against two pre-labeled samples of Twitter users (N1=1163; N2=659) whose age labels were manually annotated. Our results indicate that the strength of the inter-rater agreement (Gwet's AC1=0.89; 0.90) between the gold standard and our approach is ‘very good’ for labelling the age group of users. The paper provides a use case of Computer Vision for enabling the development of large cross-sectional labeled datasets, and further advances novel solutions in the field of demographic inference from short social media texts.
从未标记的社交媒体数据中推断人口情报是一个积极发展的研究领域,受到基础事实注释训练语料库的低可用性的挑战。标记社交媒体用户人口统计特征的高精度方法采用各种启发式方法,这些方法不会扩大规模,并且经常忽略非英语文本和边缘化用户。首先,我们提出了一个使用微软Azure Face API从Twitter用户的个人资料图片(头像)推断其人口统计属性的框架。其次,我们测量了使用我们的框架对两个预先标记的Twitter用户样本(N1=1163;N2=659),年龄标签手工标注。我们的研究结果表明,评级间的协议强度(Gwet的AC1=0.89;0.90),在标记用户年龄组方面,我们的方法“非常好”。本文提供了一个计算机视觉的用例,用于开发大型横截面标记数据集,并进一步推进了从短社交媒体文本进行人口统计推断领域的新解决方案。