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ISC: An Iterative Social Based Classifier for Adult Account Detection on Twitter

机译:ISC:用于Twitter上成人帐户检测的基于社交的迭代分类器

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摘要

The widespread of adult content on online social networks (e.g., Twitter) is becoming an emerging yet critical problem. An automatic method to identify accounts spreading sexually explicit content (i.e., adult account) is of significant values in protecting children and improving user experiences. Traditional adult content detection techniques are ill-suited for detecting adult accounts on Twitter due to the diversity and dynamics in Twitter content. In this paper, we formulate the adult account detection as a graph based classification problem and demonstrate our detection method on Twitter by using social links between Twitter accounts and entities in tweets. As adult Twitter accounts are mostly connected with normal accounts and post many normal entities, which makes the graph full of noisy links, existing graph based classification techniques cannot work well on such a graph. To address this problem, we propose an iterative social based classifier (ISC), a novel graph based classification technique resistant to the noisy links. Evaluations using large-scale real-world Twitter data show that, by labeling a small number of popular Twitter accounts, ISC can achieve satisfactory performance in adult account detection, significantly outperforming existing techniques.
机译:成人内容在在线社交网络(例如Twitter)上的广泛传播正在成为一个新兴但至关重要的问题。自动识别散布色情内容的帐户(即成人帐户)的自动方法在保护儿童和改善用户体验方面具有重要价值。由于Twitter内容的多样性和动态性,传统的成人内容检测技术不适合在Twitter上检测成人帐户。在本文中,我们将成人帐户检测公式化为基于图的分类问题,并通过使用Twitter帐户与推文中的实体之间的社交链接在Twitter上演示我们的检测方法。由于成人Twitter帐户通常与普通帐户相关联,并且发布了许多普通实体,这使图充满了嘈杂的链接,因此现有的基于图的分类技术无法在这种图上很好地工作。为了解决这个问题,我们提出了一种基于社交的迭代分类器(ISC),这是一种新颖的基于图的分类技术,可以抵抗嘈杂的链接。使用大规模真实Twitter数据进行的评估表明,通过标记少量流行的Twitter帐户,ISC可以在成人帐户检测中获得令人满意的性能,大大优于现有技术。

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