首页> 外文期刊>International Journal of Data Science and Analytics >You must have clicked on this ad by mistake! Data-driven identification of accidental clicks on mobile ads with applications to advertiser cost discounting and click-through rate prediction
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You must have clicked on this ad by mistake! Data-driven identification of accidental clicks on mobile ads with applications to advertiser cost discounting and click-through rate prediction

机译:您一定是误点击了此广告!数据驱动的移动广告意外点击识别,以及广告客户成本折扣和点击率预测的应用

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摘要

In the cost per click pricing model, an advertiser pays an ad network only when a user clicks on an ad; in turn, the ad network gives a share of that revenue to the publisher where the ad was impressed. Still, advertisers may be unsatisfied with ad networks charging them for "valueless" clicks, or so-called accidental clicks. These happen when users click on an ad, are redirected to the advertiser website and bounce back without spending any time on the ad landing page. Charging advertisers for such clicks is detrimental in the long term as the advertiser may decide to run their campaigns on other ad networks. In addition, machine-learned click models trained to predict which ad will bring the highest revenue may overestimate an ad click-through rate, and as a consequence negatively impacting revenue for both the ad network and the publisher. In this work, we propose a data-driven method to detect accidental clicks from the perspective of the ad network. We collect observations of time spent by users on a large set of ad landing pages-i.e., dwell time. We notice that the majority of per-ad distributions of dwell time fit to a mixture of distributions, where each component may correspond to a particular type of clicks, the first one being accidental. We then estimate dwell time thresholds of accidental clicks from that component. Using our method to identify accidental clicks, we then propose a technique that smoothly discounts the advertiser's cost of accidental clicks at billing time. Experiments conducted on a large dataset of ads served on Yahoo mobile apps confirm that our thresholds are stable over time, and revenue loss in the short term is marginal. We also compare the performance of an existing machine-learned click model trained on all ad clicks with that of the same model trained only on non-accidental clicks. There, we observe an increase in both ad click-through rate (+3.9%) and revenue (+0.2%) on ads served by the Yahoo Gemini network when using the latter. These two applications validate the need to consider accidental clicks for both billing advertisers and training ad click models.
机译:在每次点击费用定价模型中,广告客户仅在用户点击广告时才向广告网络付款;反过来,广告网络会将收益的一部分分配给印象深刻的发布商。仍然,广告商可能对广告网络收取“无价值”点击或所谓的意外点击付费不满意。当用户点击广告,将其重定向到广告客户网站并反弹回来而无需花费任何时间在广告目标网页上时,就会发生这种情况。从长远来看,向广告客户收取此类点击的费用是有害的,因为广告客户可能会决定在其他广告网络上投放其广告系列。此外,经过机器学习的点击模型经过训练,可以预测哪个广告将带来最高的收入,这可能会高估广告的点击率,从而对广告网络和发布商的收入产生负面影响。在这项工作中,我们提出了一种数据驱动的方法来从广告网络的角度检测意外点击。我们收集用户在大量广告目标网页上花费的时间(即停留时间)的观察结果。我们注意到,停留时间的每个广告的大部分分布都适合于混合分布,其中每个组成部分可能对应于特定类型的点击,第一个是偶然的。然后,我们估计来自该组件的意外点击的停留时间阈值。然后,使用我们的方法来识别意外点击,然后提出一种技术,该技术可以在开票时平稳地打折广告商的意外点击费用。在Yahoo移动应用上投放的大型广告数据集上进行的实验证实,我们的阈值随着时间的推移是稳定的,并且短期内收入损失很小。我们还将在所有广告点击上训练的现有机器学习点击模型的性能与仅在非意外点击上训练的相同模型的性能进行比较。在那里,我们观察到使用Yahoo Gemini网络投放的广告的广告点击率(+ 3.9%)和收入(+ 0.2%)均有增长。这两个应用程序验证了需要考虑计费广告客户和训练广告点击模型的意外点击。

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