沉默之声:解读社交媒体真相发现中的沉默

H. Cui, T. Abdelzaher
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引用次数: 2

摘要

本文以社交媒体上的真相发现为目的,加强对沉默的解读。从社交媒体数据中寻找事实问题的大多数解决方案都侧重于用户明确发布的内容。然而,没有帖子也在解释信息的真实性方面起着关键作用。在本文中,我们关注的是(缺少链接的)转发图。由于许多潜在的原因,用户可能不愿传播内容。例如,他们可能不知道原始帖子;他们可能会觉得内容无趣;或者他们可能会怀疑内容的真实性并避免传播(以及其他原因)。本文提出了一个共同的事实发现和沉默解释问题,并表明联合表述显著提高了我们区分真假主张的能力。为了解决这一问题,提出了一种无监督算法——联合网络嵌入和最大似然(JNEML)框架。我们表明,在使用Twitter API收集的三个经验数据集上,联合算法在真理发现任务上显著优于其他无监督基线。
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The voice of silence: interpreting silence in truth discovery on social media
This paper enhances the interpretation of silence for purposes of truth discovery on social media. Most solutions to fact-finding problems from social media data focus on what users explicitly post. Absence of a post, however, also plays a key role in interpreting veracity of information. In this paper, we focus on (absent links in) the retweet graph. A user might abstain from propagating content for many potential reasons. For example, they might not be aware of the original post; they might find the content uninteresting; or they might doubt content veracity and refrain from propagation (among other reasons). This paper formulates a joint fact-finding and silence interpretation problem, and shows that the joint formulation significantly improves our ability to distinguish true and false claims. An unsupervised algorithm, Joint Network Embedding and Maximum Likelihood (JNEML) framework, is developed to solve this problem. We show that the joint algorithm outperforms other unsupervised baselines significantly on truth discovery tasks on three empirical data sets collected using the Twitter API.
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