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Forecasting user visits for online display advertising

机译:预测在线展示广告的用户访问量

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摘要

Online display advertising is a multi-billion dollar industry where advertisers promote their products to users by having publishers display their advertisements on popular Web pages. An important problem in online advertising is how to forecast the number of user visits for a Web page during a particular period of time. Prior research addressed the problem by using traditional time-series forecasting techniques on historical data of user visits; (e.g., via a single regression model built for forecasting based on historical data for all Web pages) and did not fully explore the fact that different types of Web pages and different time stamps have different patterns of user visits. In this paper, we propose a series of probabilistic latent class models to automatically learn the underlying user visit patterns among multiple Web pages and multiple time stamps. The last (and the most effective) proposed model identifies latent groups/classes of (i) Web pages and (ii) time stamps with similar user visit patterns, and learns a specialized forecast model for each latent Web page and time stamp class. Compared with a single regression model as well as several other baselines, the proposed latent class model approach has the capability of differentiating the importance of different types of information across different classes of Web pages and time stamps, and therefore has much better modeling flexibility. An extensive set of experiments along with detailed analysis carried out on real-world data from Yahoo! demonstrates the advantage of the proposed latent class models in forecasting online user visits in online display advertising.
机译:在线展示广告是一个价值数十亿美元的行业,广告商通过让发布者在流行的网页上展示其广告来向用户推广其产品。在线广告中的一个重要问题是如何预测特定时间段内网页的用户访问次数。先前的研究通过对用户访问的历史数据使用传统的时间序列预测技术来解决该问题; (例如,通过基于所有网页的历史数据基于预测建立的单个回归模型),并没有完全探讨不同类型的网页和不同的时间戳具有不同的用户访问方式这一事实。在本文中,我们提出了一系列概率潜在类模型,以自动学习多个网页和多个时间戳之间的潜在用户访问模式。最后一个(也是最有效的)建议模型可以识别(i)网页和(ii)具有相似用户访问模式的时间戳的潜在组/类别,并为每个潜在网页和时间戳类别学习专门的预测模型。与单个回归模型以及其他几个基线相比,所提出的潜在类模型方法具有区分不同类型的Web页面和时间戳上不同类型信息重要性的能力,因此具有更好的建模灵活性。对来自Yahoo!真实数据的大量实验以及详细分析。演示了潜在类模型在预测在线展示广告中的在线用户访问量方面的优势。

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