Which Clicks Lead to Conversions? - Modeling User-journeys Across Multiple Types of Online Advertising

Florian Nottorf
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引用次数: 1

Abstract

With an increase in the potential to allocate financial online advertising spending, managers are facing a sophisticated decision and allocation process. We developed a binary logit model with a Bayesian mixture approach to address consumers' buying decision processes and to account for the effects of multiple online advertising channels. By analyzing data from a medium-sized online mail order business, we found inherent differences in the effects of consumer clicks on purchasing probabilities across multiple advertising channels. We developed an alternative approach to account for the different attribution of success of advertising channels — the average success probability (ASP). Compared to standardized metrics, we found paid search advertising to be overestimated and retargeting display advertising to be underestimated. We further found that the mixture approach is useful for considering heterogeneity in the individual propensity of consumers to purchase; for the majority of consumers (more than 90%), repeated clicks on advertisements decrease their probability of purchasing. In contrast with this segment, we found a smaller segment of consumers (nearly 10%) whose clicks on advertisements increase conversion probabilities. Our approaches will help managers to better understand consumer online search and buying behavior over time and to allocate financial spending more efficiently across multiple types of online advertising.
哪些点击会带来转化?-跨多种类型的在线广告建模用户旅程
随着在线广告财务支出分配潜力的增加,管理人员正面临着一个复杂的决策和分配过程。我们用贝叶斯混合方法开发了一个二元logit模型,以解决消费者的购买决策过程,并考虑多种在线广告渠道的影响。通过分析一个中等规模的在线邮购业务的数据,我们发现在不同的广告渠道中,消费者点击对购买概率的影响存在内在差异。我们开发了一种替代方法来解释广告渠道成功的不同归因-平均成功概率(ASP)。与标准化指标相比,我们发现付费搜索广告被高估了,而重新定位显示广告被低估了。我们进一步发现,混合方法对于考虑消费者个人购买倾向的异质性是有用的;对于大多数消费者(超过90%)来说,重复点击广告会降低他们购买的可能性。与此形成对比的是,我们发现有一小部分消费者(近10%)的广告点击增加了转化概率。我们的方法将帮助管理者更好地了解消费者的在线搜索和购买行为,并在多种类型的在线广告中更有效地分配财务支出。
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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