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A Hybrid Abnormal Advertising Traffic Detection Method

机译:一种混合式异常广告流量检测方法

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摘要

Abnormal traffic is pervasive in the online advertising market. There are various cheating approaches while traditional anti-fraud methods are only effective for specific patterns. Combining the rule-based methods with supervised classification methods, we propose an abnormal traffic detection framework on both user layer and traffic layer. On the user layer, rule-based filters are designed to detect malicious users with duplicate clicks. We extract hybrid features under multi-granular time windows and train a user classifier to filter cheaters and complex spams indirectly. On traffic layer, we apply traffic filters to detect explicit fraudulent clicks and use a prediction model to detect malicious traffic with a higher precision. Extensive experiments on ground-truth data demonstrate the effectiveness of our detection method.
机译:在线广告市场中普遍存在流量异常。有多种作弊方法,而传统的反欺诈方法仅对特定模式有效。结合基于规则的方法和监督分类方法,我们在用户层和流量层都提出了异常流量检测框架。在用户层,基于规则的筛选器旨在检测重复单击的恶意用户。我们在多粒度时间窗口下提取混合特征,并训练用户分类器间接过滤作弊者和复杂垃圾邮件。在流量层,我们应用流量过滤器检测明显的欺诈点击,并使用预测模型以更高的精度检测恶意流量。大量实地数据实验证明了我们检测方法的有效性。

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