通过点击预测来预测新广告的点击率

Alexander Kolesnikov, Yury Logachev, V. A. Topinskiy
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引用次数: 8

摘要

预测搜索结果页面上广告的点击率是一个紧迫的话题。这样做的原因是,选择合适的广告极大地影响了搜索引擎和广告商的收入以及用户的满意度。对于具有大量点击记录的广告,如何利用统计数据来预测点击率是非常清楚的。但对于点击记录不佳的新广告,这种方法并不稳健和可靠。我们提出了一个模型来预测这些新广告的点击率。与之前预测新广告点击率的模型相反,我们的模型使用事件-点击和跳过1而不是观察到的点击率。此外,我们还实现了几个新颖的功能,从而提高了模型的性能。在真实的搜索引擎系统上进行的离线和在线实验表明,我们的模型优于基线和先前论文中提出的方法。
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Predicting CTR of new ads via click prediction
Predicting CTR of ads on the search result page is an urgent topic. The reason for this is that choosing the right advertisement greatly affects revenue of the search engine and advertisers and user's satisfaction. For ads with the large click history it is quite clear how to predict CTR by utilizing statistical data. But for new ads with a poor click history such approach is not robust and reliable. We suggest a model for predicting CTR of such new ads. Contrary to the previous models of predicting CTR of new ads, our model uses events - clicks and skips1 instead of the observed CTR. In addition we have implemented several novel features, that resulted into the increase of the performance of our model. Offline and online experiments on the real search engine system demonstrated that our model outperforms the baseline and the approaches suggested in previous papers.
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