宗教政治家和创意摄影师:Twitter中的自动用户分类

Claudia Wagner, S. Asur, J. Hailpern
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引用次数: 23

摘要

找到“合适的人”是社交媒体系统的一个核心方面。Twitter拥有数以百万计的用户,他们有着不同的兴趣、职业和个性。对于广告和营销等领域的人来说,确定目标用户的某些特征是很重要的。然而,Twitter用户通常不会在他们的个人资料中提供足够的信息,这使得这项任务变得困难。作为回应,这项工作着手根据从Twitter用户的内容、他们的互动网络、他们的朋友的属性和他们的活动模式中提取的特征,自动推断他们的职业(例如,音乐家、卫生部门工作人员、技术人员)和与个性相关的属性(例如,创意、创新、有趣)。我们开发了一套全面的潜在特征,然后根据这两个维度(职业和个性)对用户进行有效的分类。我们在大量Twitter用户样本上的实验表明,在检测职业和个性相关属性方面,该方法具有很高的总体准确性,同时也突出了针对特定类别用户的各种类型特征的优点和缺点。
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Religious Politicians and Creative Photographers: Automatic User Categorization in Twitter
Finding the ''right people'' is a central aspect of social media systems. Twitter has millions of users who have varied interests, professions and personalities. For those in fields such as advertising and marketing, it is important to identify certain characteristics of users to target. However, Twitter users do not generally provide sufficient information about themselves on their profile which makes this task difficult. In response, this work sets out to automatically infer professions (e.g., musicians, health sector workers, technicians) and personality related attributes (e.g., creative, innovative, funny) for Twitter users based on features extracted from their content, their interaction networks, attributes of their friends and their activity patterns. We develop a comprehensive set of latent features that are then employed to perform efficient classification of users along these two dimensions (profession and personality). Our experiments on a large sample of Twitter users demonstrate both a high overall accuracy in detecting profession and personality related attributes as well as highlighting the benefits and pitfalls of various types of features for particular categories of users.
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