首页> 外文期刊>Marketing Science >Customer Acquisition via Display Advertising Using Multi-Armed Bandit Experiments
【24h】

Customer Acquisition via Display Advertising Using Multi-Armed Bandit Experiments

机译:通过多方强盗实验通过展示广告吸引客户

获取原文
获取原文并翻译 | 示例
       

摘要

Firms using online advertising regularly run experiments with multiple versions of their ads since they are uncertain about which ones are most effective. During a campaign, firms try to adapt to intermediate results of their tests, optimizing what they earn while learning about their ads. Yet how should they decide what percentage of impressions to allocate to each ad? This paper answers that question, resolving the well-known "learn-and-earn" trade-off using multi-armed bandit (MAB) methods. The online advertiser's MAB problem, however, contains particular challenges, such as a hierarchical structure (ads within a website), attributes of actions (creative elements of an ad), and batched decisions (millions of impressions at a time), that are not fully accommodated by existing MAB methods. Our approach captures how the impact of observable ad attributes on ad effectiveness differs by website in unobserved ways, and our policy generates allocations of impressions that can be used in practice. We implemented this policy in a live field experiment delivering over 750 million ad impressions in an online display campaign with a large retail bank. Over the course of two months, our policy achieved an 8% improvement in the customer acquisition rate, relative to a control policy, without any additional costs to the bank. Beyond the actual experiment, we performed counterfactual simulations to evaluate a range of alternative model specifications and allocation rules in MAB policies. Finally, we show that customer acquisition would decrease by about 10% if the firm were to optimize click-through rates instead of conversion directly, a finding that has implications for understanding the marketing funnel.
机译:使用在线广告的公司会定期对其多个版本的广告进行实验,因为他们不确定哪个版本最有效。在竞选期间,公司尝试适应测试的中间结果,以优化他们在学习广告时获得的收入。但是,他们应该如何决定应分配给每个广告的展示次数的百分比?本文回答了这个问题,使用多臂匪徒(MAB)方法解决了著名的“学习与获利”折衷方案。但是,在线广告商的MAB问题包含特定的挑战,例如层次结构(网站内的广告),操作的属性(广告的创​​意元素)以及批量决策(一次展示数百万)现有的MAB方法完全可以容纳。我们的方法捕获了可观察的广告属性对广告效果的影响如何以未观察到的方式因网站而异,并且我们的政策会生成可在实践中使用的展示次数分配。我们在一项现场实验中实施了这项政策,并通过大型零售银行的在线展示广告系列投放了超过7.5亿次广告展示。在两个月的时间里,相对于控制策略,我们的策略使客户获取率提高了8%,而银行没有任何额外费用。除了实际实验之外,我们还进行了反事实模拟,以评估MAB策略中的一系列替代模型规范和分配规则。最后,我们表明,如果公司优化点击率而不是直接转化,则客户获取量将减少约10%,这一发现对理解营销渠道具有重要意义。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号