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Towards Social User Profiling: Unified and Discriminative Influence Model for Inferring Home Locations

机译:迈向社交用户分析:推断家庭位置的统一和区分性影响模型

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摘要

Users' locations are important to many applications such as targeted advertisement and news recommendation. In this paper, we focus on the problem of profiling users' home locations in the context of social network (Twitter). The problem is nontrivial, because signals, which may help to identify a user's location, are scarce and noisy. We propose a unified discriminative influence model, named as UDI, to solve the problem. To overcome the challenge of scarce signals, UDI integrates signals observed from both social network (friends) and user-centric data (tweets) in a unified probabilistic framework. To overcome the challenge of noisy signals, UDI captures how likely a user connects to a signal with respect to 1) the distance between the user and the signal, and 2) the influence scope of the signal. Based on the model, we develop local and global location prediction methods. The experiments on a large scale data set show that our methods improve the state-of-the-art methods by 13%, and achieve the best performance.
机译:用户的位置对于许多应用程序都很重要,例如定向广告和新闻推荐。在本文中,我们重点关注在社交网络(Twitter)上下文中对用户的家庭位置进行概要分析的问题。这个问题很重要,因为可能有助于识别用户位置的信号稀少且嘈杂。我们提出了一个统一的判别影响模型,称为UDI,以解决该问题。为了克服稀缺信号的挑战,UDI在统一的概率框架中集成了从社交网络(朋友)和以用户为中心的数据(推特)中观察到的信号。为了克服嘈杂信号的挑战,UDI会针对1)用户与信号之间的距离以及2)信号的影响范围来捕获用户连接到信号的可能性。基于该模型,我们开发了局部和全局位置预测方法。在大规模数据集上进行的实验表明,我们的方法将最先进的方法提高了13%,并实现了最佳性能。

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