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Ad Blocking Whitelist Prediction for Online Publishers

机译:在线发布者的广告屏蔽白名单预测

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The fast increase in ad blocker usage results in large revenue loss for online publishers and advertisers. Many publishers initialize counter-ad-blocking strategies, where a user has to choose either whitelisting the publisher’s web site in their ad blocker or leaving the site without accessing the content. This paper aims to predict the user whitelisting behavior, which can help online publishers to better assess users’ interests and design corresponding strategies. We present several techniques for personalized whitelist prediction for a target user and a target web page. Our prediction models are evaluated on real-world data provided by a large online publisher, Forbes Media. The best prediction performance was achieved using the gradient boosting regression tree model, which also demonstrated robustness and efficiency.
机译:广告拦截使用的快速增长导致在线发布商和广告商的大量收入亏损。许多出版商初始化反广告拦截策略,其中用户必须在其广告拦截器中选择发布者的网站,或者在不访问内容的情况下离开该站点。本文旨在预测用户白名单行为,可以帮助在线发布者更好地评估用户的兴趣和设计相应的策略。我们为目标用户和目标网页提供了几种用于个性化白名单预测的技术。我们的预测模型是在大型在线发布商,FORBES媒体提供的真实数据上进行评估。使用梯度升压回归树模型实现了最佳预测性能,这也证明了鲁棒性和效率。

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