联合非负矩阵分解学习Twitter上的思想学习

Preethi Lahoti, Venkata Rama Kiran Garimella, A. Gionis
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引用次数: 43

摘要

人们正以惊人的速度从传统新闻来源转向网络新闻。然而,在线新闻消费背后的技术促进了证实用户现有观点的内容。这一现象导致了意见的两极分化和对对立意见的不容忍。因此,一个关键问题是建立社交媒体上的信息过滤气泡模型并设计消除它们的方法。在本文中,我们使用机器学习方法来学习Twitter上的自由-保守意识形态空间,并展示了我们如何使用学习的潜在空间来解决过滤气泡问题。我们将学习社交媒体用户和媒体来源的自由-保守意识形态空间的问题建模为一个约束的非负矩阵分解问题。我们的模型将社会网络结构和内容消费信息结合在一个具有共享潜在因素的联合分解问题中。我们在包含有争议话题的真实Twitter数据集上验证了我们的模型和解决方案,并表明我们能够按意识形态分离用户,纯度超过90%。当应用于媒体来源时,我们的方法估计意识形态得分与基本事实意识形态得分高度相关(Pearson相关性为0.9)。最后,我们展示了我们的模型在现实场景中的实用性,说明了如何使用学习到的意识形态潜在空间来开发探索性和交互式界面,帮助用户扩散他们的信息过滤泡沫。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Joint Non-negative Matrix Factorization for Learning Ideological Leaning on Twitter
People are shifting from traditional news sources to online news at an incredibly fast rate. However, the technology behind online news consumption promotes content that confirms the users» existing point of view. This phenomenon has led to polarization of opinions and intolerance towards opposing views. Thus, a key problem is to model information filter bubbles on social media and design methods to eliminate them. In this paper, we use a machine-learning approach to learn a liberal-conservative ideology space on Twitter, and show how we can use the learned latent space to tackle the filter bubble problem. We model the problem of learning the liberal-conservative ideology space of social media users and media sources as a constrained non-negative matrix-factorization problem. Our model incorporates the social-network structure and content-consumption information in a joint factorization problem with shared latent factors. We validate our model and solution on a real-world Twitter dataset consisting of controversial topics, and show that we are able to separate users by ideology with over 90% purity. When applied to media sources, our approach estimates ideology scores that are highly correlated(Pearson correlation 0.9) with ground-truth ideology scores. Finally, we demonstrate the utility of our model in real-world scenarios, by illustrating how the learned ideology latent space can be used to develop exploratory and interactive interfaces that can help users in diffusing their information filter bubble.
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