一种新的数字广告平台特征工程框架

Saeid Soheily-Khah, Yiming Wu
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引用次数: 2

摘要

数字广告在世界各地都在大规模增长,如今,它是接触潜在客户的最佳方式,他们绝大多数时间都在互联网上度过。虽然广告是关于产品或服务等内容的在线公告,但预测用户对广告采取任何行动的概率对许多网络应用程序至关重要。由于超过数十亿的日活跃用户和数百万的日活跃广告商,一个典型的模型应该每天提供数十亿事件的预测。因此,主要的挑战在于解决规模问题的大设计空间,我们需要依赖于设计良好的功能子集。在本文中,我们提出了一种新的特征工程框架,专门使用高效的统计方法进行特征选择,其显著优于最先进的方法。为了证明我们的说法,使用了一个正在进行的营销活动的大型数据集来评估所提出方法的效率,其中的结果说明了它们的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Feature Engineering Framework in Digital Advertising Platform
Digital advertising is growing massively all over the world, and, nowadays, is the best way to reach potential customers, where they spend the vast majority of their time on the Internet. While an advertisement is an announcement online about something such as a product or service, predicting the probability that a user do any action on the ads, is critical to many web applications. Due to over billions daily active users, and millions daily active advertisers, a typical model should provide predictions on billions events per day. So, the main challenge lies in the large design space to address issues of scale, where we need to rely on a subset of well-designed features. In this paper, we propose a novel feature engineering framework, specialized in feature selection using the efficient statistical approaches, which significantly outperform the state-of-the-art ones. To justify our claim, a large dataset of a running marketing campaign is used to evaluate the efficiency of the proposed approaches, where the results illustrate their benefits.
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