不完全信息下模因时空动态的揭示

Hancheng Ge, James Caverlee, N. Zhang, A. Squicciarini
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引用次数: 26

摘要

建模、理解和预测网络模因的时空动态是一项重要的任务,对基于位置的服务、社交媒体搜索、定向广告和内容交付网络都有影响。然而,揭示这些动态的原始数据往往是不完整且容易出错的;例如,API限制和数据采样策略可能导致对这些动态的不完整(通常是有偏见的)看法。因此,在本文中,我们通过一个新的时空动态恢复框架来研究揭示完整(潜在)分布的新方法,该框架模拟了地点、模因和时间之间的潜在关系。通过将这些隐藏的关系整合到一个基于张量的恢复框架(称为AirCP)中,我们发现只需访问全部数据的一小部分就可以建立高质量的模因传播模型。在合成和真实Twitter标签数据上的实验结果表明,所提出的框架具有良好的性能:与五个最先进的替代方案相比,在恢复标签的时空动态方面平均提高了27%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncovering the Spatio-Temporal Dynamics of Memes in the Presence of Incomplete Information
Modeling, understanding, and predicting the spatio-temporal dynamics of online memes are important tasks, with ramifications on location-based services, social media search, targeted advertising and content delivery networks. However, the raw data revealing these dynamics are often incomplete and error-prone; for example, API limitations and data sampling policies can lead to an incomplete (and often biased) perspective on these dynamics. Hence, in this paper, we investigate new methods for uncovering the full (underlying) distribution through a novel spatio-temporal dynamics recovery framework which models the latent relationships among locations, memes, and times. By integrating these hidden relationships into a tensor-based recovery framework -- called AirCP -- we find that high-quality models of meme spread can be built with access to only a fraction of the full data. Experimental results on both synthetic and real-world Twitter hashtag data demonstrate the promising performance of the proposed framework: an average improvement of over 27% in recovering the spatio-temporal dynamics of hashtags versus five state-of-the-art alternatives.
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