移动广告(D):估算移动应用会话时间以获得更好的广告

John P. Rula, Byungjin Jun, F. Bustamante
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引用次数: 14

摘要

虽然手机广告是手机应用的主要收入来源,但手机用户的使用模式,以及他们的参与度和曝光时间,可能与当前广告的有效性相冲突。用户对应用的参与度可能从几秒钟到几分钟不等,这取决于用户的位置、同时进行的活动和目标等多种因素。尽管用户参与的时间范围很广,但目前的广告拍卖形式决定了广告在实际观看之前就被定价、出售和配置,这与实际的广告曝光时间无关。我们认为,移动设备上丰富的易于收集的上下文信息足以让广告商通过有效地预测曝光时间来做出更好的选择。我们对美国和韩国的37名用户进行了为期两周的详细用户研究,分析了移动设备的使用模式。在描述了应用程序会话时间之后,我们使用因子分析来推导一个简单的预测模型,并证明与平均会话时间相比,该模型在90%的情况下能够提供更高的准确性。我们认为,在手机广告价格中包含预测的广告曝光持续时间,并认为此类信息可以显著影响手机广告的有效性,使发行商能够根据用户粘性长度调整广告活动,在降低网络利用率和设备功耗的同时,创造一个更有效的广告印象市场。
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Mobile AD(D): Estimating Mobile App Session Times for Better Ads
While mobile advertisement is the dominant source of revenue for mobile apps, the usage patterns of mobile users, and thus their engagement and exposure times, may be in conflict with the effectiveness of current ads. Users engagement with apps can range from a few seconds to several minutes, depending on a number of factors such as users' locations, concurrent activities and goals. Despite the wide-range of engagement times, the current format of ad auctions dictates that ads are priced, sold and configured prior to actual viewing, that is regardless of the actual ad exposure time. We argue that the wealth of easy-to-gather contextual information on mobile devices is sufficient to allow advertisers to make better choices by effectively predicting exposure time. We analyze mobile device usage patters with a detailed two-week long user study of 37 users in the US and South Korea. After characterizing application session times, we use factor analysis to derive a simple predictive model and show that is able to offer improved accuracy compared to mean session time over 90% of the time. We make the case for including predicted ad exposure duration in the price of mobile advertisements and posit that such information could significantly impact the effectiveness of mobile ads by giving publishers the ability to tune campaigns for engagement length, and enable a more efficient market for ad impressions while lowering network utilization and device power consumption.
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