优化在线视频广告客户的数量和频率预测

J. Talbot, W. Weber, M. Myers, E. Wangerin, J. Lunsford, W. Scherer
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引用次数: 0

摘要

Videology是一家在线广告公司,拥有针对性的广告平台,可以更有效地将品牌与目标消费者联系起来。通过获取和利用用户数据,广告商通过一个被称为行为定位的过程来定位特定的群体。这个过程增加了用户点击广告的几率,减少了用户遇到不相关广告的几率。虽然Videology在这一领域的市场份额有所增长,但低效的预测导致了数十万美元的机会成本损失。本文通过利用系统工程方法来解决这个问题,建议优化两个预测变量的有效性和性能的过程。本文首先分析了访问量预测变量:访问者预期数量,其次分析了频率预测变量:访问者返回同一网站的次数。研究人员利用现有数据构建了一个伪过程来复制Videology的算法,以测试预测的有效性并对其进行增强。然后,视频学将利用这一过程的发现继续预测改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing volume and frequency forecasts for an online video advertiser
Videology is an online advertising company with a targeted advertising platform that more efficiently connects brands with target consumers. By obtaining and utilizing user data, advertisers have targeted specific groups through a process known as behavioral targeting. This process increases the odds that a user will click on an advertisement and reduces the odds that a customer will encounter irrelevant advertisements. While Videology has grown their market share in this space, inefficient forecasts have cost several hundred thousand dollars in lost opportunity costs. This paper addresses this problem by leveraging a systems engineering approach to suggest procedures for optimizing the validity and performance of two forecast variables for Videology. The paper first analyzes a volume forecast variable: the expected number of visitors, and second, a frequency forecast variable: the number of times a visitor comes back to the same website. Research used existing data to construct a pseudo-process to replicate Videology's algorithm in order to test the validity of and make enhancements to forecasts. Videology will then utilize findings from this process to continue forecast improvements.
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