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Adversarial Collusion on the Web: State-of-the-Art and Future Directions

机译:网站上的对抗勾结:最先进的和未来方向

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The growth and popularity of online media has made it the most important platform for collaboration and communication among its users. Given its tremendous growth, social reputation of an entity in online media plays an important role. This has led to users choosing artificial ways to gain social reputation by means of blackmarket services as the natural way to boost social reputation is time-consuming. We refer to such artificial ways of boosting social reputation as collusion. In this tutorial, we will comprehensively review recent developments in analyzing and detecting collusive entities on online media. First, we give an overview of the problem and motivate the need to detect these entities. Second, we survey the state-of-the-art models that range from designing feature-based methods to more complex models, such as using deep learning architectures and advanced graph concepts. Third, we detail the annotation guidelines, provide a description of tools/applications and explain the publicly available datasets. The tutorial concludes with a discussion of future trends.
机译:在线媒体的增长和普及使其成为其用户之间的合作和沟通最重要的平台。鉴于其巨大的增长,在线媒体中的一个实体的社会声誉发挥着重要作用。这导致用户选择人为方式通过黑色市场服务获得社会声誉,作为加强社会声誉的自然方式是耗时的。我们指的是促进社会声誉的人为方式作为勾结。在本教程中,我们将全面审查最近的开发,在在线媒体上分析和检测贯穿杂乱实体。首先,我们概述问题并激励检测这些实体的需要。其次,我们调查了从设计基于功能的方法的最先进的模型,以更复杂的模型,例如使用深度学习架构和高级图形概念。第三,我们详细介绍了注释指南,提供了对工具/应用程序的描述并解释公开的数据集。该教程讨论了未来趋势的讨论。

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