从基础设施到文化:大规模社交网络中的A/B测试挑战

Ya Xu, Nanyu Chen, A. Fernandez, Omar Sinno, Anmol Bhasin
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引用次数: 201

摘要

A/B测试,也被称为桶式测试、分割测试或控制实验,是评估新服务、功能或产品的用户参与度或满意度的标准方法。它被广泛应用于在线网站,包括Facebook、LinkedIn和Twitter等社交网站,以做出数据驱动的决策。在LinkedIn,随着时间的推移,我们看到了控制实验的巨大增长,现在每天有超过400个同时进行的实验。一般的A/B测试框架和方法,包括挑战和陷阱,已经在以前的几个KDD工作中进行了广泛的讨论[7,8,9,10]。在本文中,我们深入描述了我们在LinkedIn建立的实验平台,以及在社交网络环境中大规模运行A/B测试时所面临的挑战。我们首先介绍了实验平台,以及它是如何构建的,以处理领英的A/B测试过程的每一步,从设计和部署实验到分析它们。然后讨论几个更复杂的A/B测试场景,比如运行离线实验和解决网络效应,其中一个用户的行为可以影响另一个用户的行为。最后,我们将讨论对于构建强大的实验文化至关重要的特征和过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From Infrastructure to Culture: A/B Testing Challenges in Large Scale Social Networks
A/B testing, also known as bucket testing, split testing, or controlled experiment, is a standard way to evaluate user engagement or satisfaction from a new service, feature, or product. It is widely used among online websites, including social network sites such as Facebook, LinkedIn, and Twitter to make data-driven decisions. At LinkedIn, we have seen tremendous growth of controlled experiments over time, with now over 400 concurrent experiments running per day. General A/B testing frameworks and methodologies, including challenges and pitfalls, have been discussed extensively in several previous KDD work [7, 8, 9, 10]. In this paper, we describe in depth the experimentation platform we have built at LinkedIn and the challenges that arise particularly when running A/B tests at large scale in a social network setting. We start with an introduction of the experimentation platform and how it is built to handle each step of the A/B testing process at LinkedIn, from designing and deploying experiments to analyzing them. It is then followed by discussions on several more sophisticated A/B testing scenarios, such as running offline experiments and addressing the network effect, where one user's action can influence that of another. Lastly, we talk about features and processes that are crucial for building a strong experimentation culture.
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