本站二维码
本站二维码
讲座报告
    讲座报告
    当前位置: 首页> 正文
    Online Advertisement Allocation Under Customer Choices and Algorithmic Fairness
    发布时间:2022年12月12日 11:33 来源: 点击:
    讲师 荣膺 时间 12月13日14:00
    地点 :腾讯会议直播(ID:609 859 703)


    讲座名称:Online Advertisement Allocation Under Customer Choices and Algorithmic Fairness

    讲座人:荣膺 教授

    讲座时间:121314:00

    讲座地点:腾讯会议直播(ID:609 859 703

    讲座人介绍:

    荣鹰博士现任上海交通大学安泰经济与管理学院教授。他于2010年回国执教于上海交通大学,此前在美国加州大学伯克利分校和里海大学从事博士后科研工作,并在上海交通大学和美国里海大学分别获学士、硕士和博士学位。荣鹰教授主要研究领域为服务系统的运营优化、新兴商业模型的运作、零售运营管理、供应链管理、数据驱动的优化模型、实证研究。研究成果发表在Management ScienceOperations ResearchManufacturing & Service Operations ManagementProduction and Operations ManagementNaval Research LogisticsIIE Transactions等国际学术刊物上。荣鹰教授是2015年度国家优秀青年科学基金和2020年度国家杰出青年科学基金获得者并且多次获得过国际奖项,其中包括两度MSOM最佳论文奖,TSL最佳论文奖和INFORMS Energy, Natural Resources & Environment Young Researcher Prize

    讲座内容:

    Advertising is a major revenue source for e-commerce platforms and an important online marketing tool for e-commerce sellers. In this paper, we explore dynamic ad allocation with limited slots upon each customer arrival for e-commerce platforms when customers follow a choice model to click the ads. Motivated by the recent advocacy for the algorithmic fairness of online ad delivery, we adjust the value from advertising by a general fairness metric evaluated with the click-throughs of different ads and customer types. The original online ad-allocation problem is intractable, so we propose a novel, stochastic program framework (called two-stage target-debt, TTD) that first decides the click-through targets then devises an ad-allocation policy to satisfy these targets in the second stage. We show the asymptotic equivalence between the original problem, the relaxed click-through target optimization, and the fluid-approximation (FA) convex program. We also design a debt-weighted offer-set (DWO) algorithm and demonstrate that, as long as the problem size scales to infinity, this algorithm is (asymptotically) optimal under the optimal first-stage click-through target. Compared to the FA heuristic and its re-solving variants, our approach has better scalability and can deplete the ad budgets more smoothly throughout the horizon, which is highly desirable for the online advertising business in practice. Finally, our proposed model and algorithm help substantially improve the fairness of ad allocation for an online e-commerce platform without compromising its efficiency much.

    主办单位:数学与统计学院

    · 南校区地址:陕西省西安市西沣路兴隆段266号

    · 北校区地址:陕西省西安市太白南路2号

    · 网站地址:http://gr.xidian.edu.cn/

    电 话: 029-81891793

    传 真: 029-81891793

    邮 箱: yjsy@xidian.edu.cn

    招生咨询联系方式

    电话: 029-81891244

    传真: 029-81891244

    邮箱:yzb@xidian.edu.cn

    研究生工作

    研究生招生

    研究生教育

    Baidu
    map