Statistical Challenges in Online Controlled Experiments: A Review of A/B Testing Methodology

Nicholas Larsen, Jonathan W. Stallrich, Srijan Sengupta, Alex Deng, Ron Kohavi, Nathaniel T. Stevens
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引用次数: 12

Abstract

The rise of internet-based services and products in the late 1990's brought about an unprecedented opportunity for online businesses to engage in large scale data-driven decision making. Over the past two decades, organizations such as Airbnb, Alibaba, Amazon, Baidu, Booking, Alphabet's Google, LinkedIn, Lyft, Meta's Facebook, Microsoft, Netflix, Twitter, Uber, and Yandex have invested tremendous resources in online controlled experiments (OCEs) to assess the impact of innovation on their customers and businesses. Running OCEs at scale has presented a host of challenges requiring solutions from many domains. In this paper we review challenges that require new statistical methodologies to address them. In particular, we discuss the practice and culture of online experimentation, as well as its statistics literature, placing the current methodologies within their relevant statistical lineages and providing illustrative examples of OCE applications. Our goal is to raise academic statisticians' awareness of these new research opportunities to increase collaboration between academia and the online industry.
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在线控制实验中的统计挑战:A/B测试方法综述
20世纪90年代末,基于互联网的服务和产品的兴起,为在线企业参与大规模数据驱动的决策带来了前所未有的机会。在过去的20年里,Airbnb、阿里巴巴、亚马逊、百度、Booking、Alphabet旗下的谷歌、LinkedIn、Lyft、Meta旗下的Facebook、微软、Netflix、Twitter、Uber和Yandex等公司在在线控制实验(OCEs)上投入了大量资源,以评估创新对其客户和业务的影响。大规模运行OCEs带来了许多挑战,需要来自许多领域的解决方案。在本文中,我们回顾了需要新的统计方法来解决这些问题的挑战。特别是,我们讨论了在线实验的实践和文化,以及其统计文献,将当前的方法置于相关的统计谱系中,并提供了OCE应用的说明性示例。我们的目标是提高学术统计学家对这些新研究机会的认识,以增加学术界和在线行业之间的合作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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