Optimal real-time bidding for display advertising

Weinan Zhang, Shuai Yuan, Jun Wang
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引用次数: 296

Abstract

In this paper we study bid optimisation for real-time bidding (RTB) based display advertising. RTB allows advertisers to bid on a display ad impression in real time when it is being generated. It goes beyond contextual advertising by motivating the bidding focused on user data and it is different from the sponsored search auction where the bid price is associated with keywords. For the demand side, a fundamental technical challenge is to automate the bidding process based on the budget, the campaign objective and various information gathered in runtime and in history. In this paper, the programmatic bidding is cast as a functional optimisation problem. Under certain dependency assumptions, we derive simple bidding functions that can be calculated in real time; our finding shows that the optimal bid has a non-linear relationship with the impression level evaluation such as the click-through rate and the conversion rate, which are estimated in real time from the impression level features. This is different from previous work that is mainly focused on a linear bidding function. Our mathematical derivation suggests that optimal bidding strategies should try to bid more impressions rather than focus on a small set of high valued impressions because according to the current RTB market data, compared to the higher evaluated impressions, the lower evaluated ones are more cost effective and the chances of winning them are relatively higher. Aside from the theoretical insights, offline experiments on a real dataset and online experiments on a production RTB system verify the effectiveness of our proposed optimal bidding strategies and the functional optimisation framework.
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展示广告最优实时竞价
本文主要研究基于实时竞价(RTB)的展示广告的竞价优化。RTB允许广告商在广告产生时实时对展示广告印象进行出价。它超越了上下文广告,以用户数据为导向,激励出价,这与赞助搜索拍卖不同,后者的出价与关键字相关。对于需求方来说,一个基本的技术挑战是基于预算、活动目标和运行时和历史中收集的各种信息来自动化招标过程。在本文中,程序化投标被视为一个功能优化问题。在一定的依赖假设下,我们推导出可以实时计算的简单竞价函数;我们的研究结果表明,最优出价与印象水平评估(如点击率和转化率)存在非线性关系,这是根据印象水平特征实时估计的。这与之前主要关注线性竞标功能的工作不同。我们的数学推导表明,最优的投标策略应该是尝试出价更多的印象,而不是专注于一小部分高价值的印象,因为根据目前的RTB市场数据,与高评价的印象相比,低评价的印象更具成本效益,赢得它们的机会也相对更高。除了理论见解之外,在真实数据集上的离线实验和在生产RTB系统上的在线实验验证了我们提出的最优竞价策略和功能优化框架的有效性。
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