Feedback Control of Real-Time Display Advertising

Weinan Zhang, Yifei Rong, Jun Wang, Tianchi Zhu, Xiaofan Wang
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引用次数: 57

Abstract

Real-Time Bidding (RTB) is revolutionising display advertising by facilitating per-impression auctions to buy ad impressions as they are being generated. Being able to use impression-level data, such as user cookies, encourages user behaviour targeting, and hence has significantly improved the effectiveness of ad campaigns. However, a fundamental drawback of RTB is its instability because the bid decision is made per impression and there are enormous fluctuations in campaigns' key performance indicators (KPIs). As such, advertisers face great difficulty in controlling their campaign performance against the associated costs. In this paper, we propose a feedback control mechanism for RTB which helps advertisers dynamically adjust the bids to effectively control the KPIs, e.g., the auction winning ratio and the effective cost per click. We further formulate an optimisation framework to show that the proposed feedback control mechanism also has the ability of optimising campaign performance. By settling the effective cost per click at an optimal reference value, the number of campaign's ad clicks can be maximised with the budget constraint. Our empirical study based on real-world data verifies the effectiveness and robustness of our RTB control system in various situations. The proposed feedback control mechanism has also been deployed on a commercial RTB platform and the online test has shown its success in generating controllable advertising performance.
实时展示广告的反馈控制
实时竞价(RTB)通过促进按印象拍卖来购买正在生成的广告印象,从而彻底改变了展示广告。能够使用印象级数据,如用户cookie,鼓励用户行为定位,从而显著提高广告活动的有效性。然而,RTB的一个根本缺点是它的不稳定性,因为竞标决定是根据印象做出的,而且活动的关键绩效指标(kpi)有很大的波动。因此,广告商在控制广告活动效果和相关成本方面面临很大困难。在本文中,我们提出了一种RTB反馈控制机制,该机制可以帮助广告商动态调整出价,从而有效地控制kpi,例如拍卖中标率和每次点击的有效成本。我们进一步制定了一个优化框架,以表明所提出的反馈控制机制也具有优化活动绩效的能力。通过将每次点击的有效成本设定为最佳参考值,广告活动的广告点击次数可以在预算限制下最大化。基于实际数据的实证研究验证了我们的RTB控制系统在各种情况下的有效性和鲁棒性。所提出的反馈控制机制也已部署在商业RTB平台上,在线测试显示其在产生可控广告效果方面取得了成功。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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