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Twitter Demographic Classification Using Deep Multi-modal Multi-task Learning

机译:使用深度多模式多任务学习的Twitter人口统计学分类

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Twitter should be an ideal place to get a fresh read on how different issues are playing with the public, one that's potentially more reflective of democracy in this new media age than traditional polls. Pollsters typically ask people a fixed set of questions, while in social media people use their own voices to speak about whatever is on their minds. However, the demographic distribution of users on Twitter is not representative of the general population. In this paper, we present a demographic classifier for gender, age, political orientation and location on Twitter. We collected and curated a robust Twitter demographic dataset for this task. Our classifier uses a deep multi-modal multitask learning architecture to reach a state-of-the-art performance, achieving an Flscore of 0.89, 0.82, 0.86, and 0.68 for gender, age, political orientation, and location respectively.
机译:Twitter应该是一个理想的场所,可以重新阅读有关公众如何处理不同问题的信息,与传统民意测验相比,Twitter在这个新媒体时代可能更能体现民主。民意测验人员通常会向人们提出一系列固定的问题,而在社交媒体中,人们会使用自己的声音来谈论他们的想法。但是,Twitter上用户的人口分布并不代表一般人群。在本文中,我们介绍了Twitter上的性别,年龄,政治倾向和位置的人口统计分类器。我们为此任务收集并策划了一个强大的Twitter人口统计数据集。我们的分类器使用深层的多模式多任务学习体系结构来达到最先进的性能,性别,年龄,政治倾向和地理位置的Flscore分别为0.89、0.82、0.86和0.68。

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