Do We Trust What They Say or What They Do? A Multimodal User Embedding Provides Personalized Explanations

Zhicheng Ren, Zhiping Xiao, Yizhou Sun
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Abstract

With the rapid development of social media, the importance of analyzing social network user data has also been put on the agenda. User representation learning in social media is a critical area of research, based on which we can conduct personalized content delivery, or detect malicious actors. Being more complicated than many other types of data, social network user data has inherent multimodal nature. Various multimodal approaches have been proposed to harness both text (i.e. post content) and relation (i.e. inter-user interaction) information to learn user embeddings of higher quality. The advent of Graph Neural Network models enables more end-to-end integration of user text embeddings and user interaction graphs in social networks. However, most of those approaches do not adequately elucidate which aspects of the data - text or graph structure information - are more helpful for predicting each specific user under a particular task, putting some burden on personalized downstream analysis and untrustworthy information filtering. We propose a simple yet effective framework called Contribution-Aware Multimodal User Embedding (CAMUE) for social networks. We have demonstrated with empirical evidence, that our approach can provide personalized explainable predictions, automatically mitigating the impact of unreliable information. We also conducted case studies to show how reasonable our results are. We observe that for most users, graph structure information is more trustworthy than text information, but there are some reasonable cases where text helps more. Our work paves the way for more explainable, reliable, and effective social media user embedding which allows for better personalized content delivery.
我们相信他们说的话还是做的事?多模态用户嵌入提供个性化解释
随着社交媒体的快速发展,分析社交网络用户数据的重要性也被提上日程。社交媒体中的用户表征学习是一个重要的研究领域,在此基础上,我们可以进行个性化内容推送或检测恶意行为者。与许多其他类型的数据相比,社交网络用户数据更为复杂,具有固有的多模态特性。为了利用文本(即帖子内容)和关系(即用户间互动)信息来学习更高质量的用户嵌入,人们提出了各种多模态方法。图神经网络模型的出现使用户文本嵌入和用户交互图在社交网络中的端到端整合成为可能。然而,这些方法大多没有充分阐明数据的哪些方面--文本或图结构信息--对预测特定任务下的每个特定用户更有帮助,这给个性化下游分析和不可信信息过滤带来了一定的负担。我们为社交网络提出了一个简单而有效的框架,称为 "贡献感知多模态用户嵌入(CAMUE)"。我们通过实证证明,我们的方法可以提供个性化的可解释预测,自动减轻不可靠信息的影响。我们还进行了案例研究,以证明我们的结果是多么合理。我们发现,对于大多数用户来说,图形结构信息比文本信息更可信,但在某些合理的情况下,文本信息的帮助更大。我们的工作为更可解释、更可靠、更有效的社交媒体用户嵌入铺平了道路,从而可以更好地提供个性化内容。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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