In sponsored search advertising (SSA), advertisers need to select keywords and determine matching types for selected keywords simultaneously, i.e., keyword targeting. An optimal keyword targeting strategy guarantees reaching the right population effectively. This paper aims to address the keyword targeting problem, which is a challenging task because of the incomplete information of historical advertising performance indices and the high uncertainty in SSA environments. First, we construct a data distribution estimation model and apply a Markov Chain Monte Carlo method to make inference about unobserved indices (i.e., impression and click-through rate) over three keyword matching types (i.e., broad, phrase and exact). Second, we formulate a stochastic keyword targeting model (BB-KSM) combining operations of keyword selection and keyword matching to maximize the expected profit under the chance constraint of the budget, and develop a branch-and-bound algorithm incorporating a stochastic simulation process for our keyword targeting model. Finally, based on a realworld dataset collected from field reports and logs of past SSA campaigns, computational experiments are conducted to evaluate the performance of our keyword targeting strategy. Experimental results show that, (a) BB-KSM outperforms seven baselines in terms of profit; (b) BB-KSM shows its superiority as the budget increases, especially in situations with more keywords and keyword combinations; (c) the proposed data distribution estimation approach can effectively address the problem of incomplete performance indices over the three matching types and in turn significantly promotes the performance of keyword targeting decisions. This research makes important contributions to the SSA literature and the results offer critical insights into keyword management for SSA advertisers.
翻译:在受赞助的搜索广告(SASA)中,广告商需要同时选择关键字并确定选定关键字的匹配类型,即关键字选择。一个最佳关键字选择战略确保有效达到合适的人口。本文旨在解决关键字选择问题,因为历史广告性能指数信息不全,而且特别服务协定环境中的不确定性很大,因此这是一个具有挑战性的任务。首先,我们建立一个数据分配估计模型,并采用Markovclance Monte Carlo方法,对三个关键字匹配类型(即广度、语句和准确度)的未观测指数(即印象和点击通率)进行推断。第二,我们设计了一个针对模式(BB-KSM)的随机关键字关键字关键字,将关键字选择和关键字的匹配工作结合起来,以便在预算的概率限制下最大限度地增加预期利润。最后,我们根据从外地报告和以往SSA运动的组合收集的真实世界数据集,进行计算实验,以评价我们关键关键关键词目标战略(即广度、语句和精确度)的性关键词关键词选择。实验结果显示,SA-KSmarrial Striferlieral Sty 将更多的业绩定义用于B的基线显示,特别是B的基号的基号的基数。