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Factoring Past Exposure in Display Advertising Targeting

机译:在展示广告定位中考虑过往曝光

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摘要

Online advertising is increasingly becoming more performance oriented, where the decision to show an advertisement to a user is made based on the user's propensity to respond to the ad in a positive manner (e.g., purchasing a product, subscribing to an email list, etc). The user response depends on how well the ad campaign matches the user's interest, as well as the amount of the user's past exposure to the campaign - a factor shown to be impactful in controlled experimental studies. Past exposure builds brand-awareness and familiarity with the user, which in turn leads to a higher propensity of the user to buy/convert on the ad impression. In this paper we propose a model of the user response to an ad campaign as a function of both interest match and past exposure, where the interest match is estimated using historical search/browse activities of the user. The goal of this paper is two-fold. First, we demonstrate the role played by the user interest and the past exposure in modeling user response by jointly estimating the parameters of these factors. We test this response model over hundreds of real ad campaigns. Second, we use the findings from this joint model to identify more relevant target users for ad campaigns. In particular, we show that on real advertising data this joint model identifies better target users compared to conventional targeting models.
机译:在线广告正变得越来越注重性能,在这种情况下,根据用户以积极方式响应广告的倾向(例如,购买产品,订阅电子邮件列表等)来决定向用户显示广告。 。用户的响应取决于广告活动与用户兴趣的匹配程度,以及用户过去对该活动的曝光量-在受控实验研究中显示出有影响力的因素。过去的曝光会建立品牌意识和对用户的熟悉度,进而导致用户购买/转化广告印象的倾向更高。在本文中,我们提出了用户对广告活动的响应模型,该模型是兴趣匹配和过去曝光的函数,其中兴趣匹配是使用用户的历史搜索/浏览活动来估算的。本文的目标是双重的。首先,我们通过共同估算这些因素的参数,展示了用户兴趣和过去暴露在建模用户响应中所扮演的角色。我们在数百个真实的广告系列中测试了此响应模型。其次,我们使用此联合模型的发现来确定广告系列的更多相关目标用户。尤其是,我们表明,与传统的目标定位模型相比,该联合模型在真实广告数据上可以识别出更好的目标用户。

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