讲座预告 | Optimal Insertion Policy of Behavioral Advertisement

上海财经大学信息管理与工程学院
2021-12-18 17:01 浏览量: 3260

When to Play Your Advertisement? Optimal Insertion Policy of Behavioral Advertisement

讲座时间:12月23日(周四)上午9:00-11:00参与方式:腾讯会议

会议号:297921134

密码:123456

主讲人:谭寅亮

01主讲人介绍

谭寅亮是美国休斯顿大学鲍尔商学院决策和信息科学终身教授,鲍尔讲席教授,供应链管理方向系主任。此前他在美国杜兰大学弗里曼商学院管理科学方向担任助理教授,戈德林国际教育中心行政主任,并获得终身教授。谭寅亮博士毕业于美国佛罗里达大学,学习运营管理及信息系统。他拥有丰富的商业分析方面的教学经验,获得过弗里曼商学院最佳教师奖。其研究兴趣主要集中在科技管理与创新,电子产品定价,以及人工智能领域。他在国际顶级期刊Management Science, MIS Quarterly, Information Systems Research, Production and Operations Management多次发表论文。现在担任Production and Operations Management的资深编辑以及Decision Science的副编辑。他于2019年被评为世界最佳40名40岁以下的商学院教授,也是杜兰大学历史上第一个获此殊荣的教授。

02讲座摘要

Digital advertisements offer a full spectrum of behavioral customization for timing and content capabilities. The existing research in display advertising has predominantly concentrated on the content of advertising; however, our focus is on optimizing the timing of display advertising. In practice, users are constantly adjusting their engagement with content as they process new information continuously. The recent development of emotional tracking and wearable technologies allows platforms to monitor the user’s engagement in real time. We model the user’s continuous engagement process through a Brownian motion. The proposed optimal policy regarding the timing of behavioral advertising is based on a threshold policy with a trigger threshold and target level. Specifically, the platform should insert the advertisement when the user’s engagement level reaches the trigger threshold, and the length of the advertisement should let the user’s engagement level drop to the target level. Analogous to the familiar idea of “price discrimination,” the methods we propose in this study allow the platforms to maximize their revenue by “discriminatory” customization of the timing and length of the advertisement based on the behavior of individual users. Finally, we quantify the benefits of the proposed policy by comparing it with the practically prevalent policies (i.e., pre-roll, mid-roll and a mix of the two) through a simulation study. Our results reveal that for a wide range of settings, the proposed policy not only significantly increases the platform’s profitability, but also improves the completion rate at which consumers finish viewing the advertisement.

编辑:刘蕊

(本文转载自 ,如有侵权请电话联系13810995524)

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