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Detecting Promotion Campaigns in Community Question Answering

机译:检测社区问题回答中的促销活动

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With Community Question Answering (CQA) evolving into a quite popular method for information seeking and providing, it also becomes a target for spammers to disseminate promotion campaigns. Although there are a number of quality estimation efforts on the CQA platform, most of these works focus on identifying and reducing low-quality answers, which are mostly generated by impatient or inexperienced answerers. However, a large number of promotion answers appear to provide high-quality information to cheat CQA users in future interactions. Therefore, most existing quality estimation works in CQA may fail to detect these specially designed answers or question-answer pairs. In contrast to these works, we focus on the promotion channels of spammers, which include (shortened) URLs, telephone numbers and social media accounts. Spammers rely on these channels to connect to users to achieve promotion goals so they are irreplaceable for spamming activities. We propose a propagation algorithm to diffuse promotion intents on an "answerer-channel" bipartite graph and detect possible spamming activities. A supervised learning framework is also proposed to identify whether a QA pair is spam based on propagated promotion intents. Experimental results based on more than 6 million entries from a popular Chinese CQA portal show that our approach outperforms a number of existing quality estimation methods for detecting promotion campaigns on both the answer level and QA pair level.
机译:通过社区问题回答(CQA)演变成一个非常流行的信息寻求和提供方法,它也成为垃圾邮件发送者来传播促销活动的目标。虽然CQA平台上有许多质量估算努力,但大多数工作都侧重于识别和减少低质量答案,这些答案主要由不耐烦或不经验的应答者产生。但是,大量的促销答案似乎提供了在未来的交互中欺骗CQA用户的高质量信息。因此,CQA中的大多数现有质量估计可能无法检测到这些专门设计的答案或质疑答案对。与这些作品相比,我们专注于垃圾邮件发送者的促销渠道,包括(缩短)URL,电话号码和社交媒体账户。垃圾邮件发送者依靠这些渠道连接到用户实现促销目标,以便他们对垃圾邮件活动不可替代。我们提出了一种传播算法来扩散促进意图,在“接收通道”二分钟和检测可能的垃圾邮件活动中。还提出了一个监督的学习框架来确定QA对是否是基于传播的促销意图的垃圾邮件。基于来自中国CQA门户的超过600万条目的实验结果表明,我们的方法优于许多现有的现有质量估算方法来检测答案水平和QA对等级的促销活动。

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