Olivier Jeunen, Shubham Baweja, Neeti Pokharna, Aleksei Ustimenko
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引用次数: 0
Abstract
Online controlled experiments, colloquially known as A/B-tests, are the bread
and butter of real-world recommender system evaluation. Typically, end-users
are randomly assigned some system variant, and a plethora of metrics are then
tracked, collected, and aggregated throughout the experiment. A North Star
metric (e.g. long-term growth or revenue) is used to assess which system
variant should be deemed superior. As a result, most collected metrics are
supporting in nature, and serve to either (i) provide an understanding of how
the experiment impacts user experience, or (ii) allow for confident
decision-making when the North Star metric moves insignificantly (i.e. a false
negative or type-II error). The latter is not straightforward: suppose a
treatment variant leads to fewer but longer sessions, with more views but fewer
engagements; should this be considered a positive or negative outcome? The question then becomes: how do we assess a supporting metric's utility
when it comes to decision-making using A/B-testing? Online platforms typically
run dozens of experiments at any given time. This provides a wealth of
information about interventions and treatment effects that can be used to
evaluate metrics' utility for online evaluation. We propose to collect this
information and leverage it to quantify type-I, type-II, and type-III errors
for the metrics of interest, alongside a distribution of measurements of their
statistical power (e.g. $z$-scores and $p$-values). We present results and
insights from building this pipeline at scale for two large-scale short-video
platforms: ShareChat and Moj; leveraging hundreds of past experiments to find
online metrics with high statistical power.
在线控制实验,俗称 A/B 测试,是现实世界中推荐系统评估的主要手段。通常,终端用户会被随机分配到某个系统变体,然后在整个实验过程中跟踪、收集和汇总大量指标。北指标(如长期增长或收入)用于评估哪个系统变体更优。因此,收集到的大多数指标在本质上都是辅助性的,其作用是:(i) 提供对实验如何影响用户体验的理解,或 (ii) 当 "北极星 "指标移动不明显时(即出现假阴性或 II 型错误),可以做出有把握的决策。后者并不简单:假设治疗变体会导致会话次数减少但时间延长,浏览次数增加但登录次数减少;这应该被视为积极结果还是消极结果?问题就变成了:在使用 A/B 测试进行决策时,我们该如何评估辅助指标的效用?在线平台通常会在任何时间运行数十个实验。这提供了大量有关干预和处理效果的信息,可用于评估在线评估指标的效用。我们建议收集这些信息,并将其用于量化相关指标的 I 类、II 类和 III 类误差,以及统计能力的测量分布(如 z 值和 p 值)。我们介绍了为两个大型短视频平台大规模构建该管道的结果和启示:ShareChat 和 Moj;利用过去的数百次实验,找到具有高统计能力的在线指标。