Many organizations run thousands of randomized experiments, or A/B tests, to statistically quantify and detect the impact of product changes. Analysts take these results to augment decision-making around deployment and investment opportunities, making the time it takes to detect an effect a key priority. Often, these experiments are conducted on customers arriving sequentially; however, the analysis is only performed at the end of the study. This is undesirable because strong effects can be detected before the end of the study, which is especially relevant for risk mitigation when the treatment effect is negative. Alternatively, analysts could perform hypotheses tests more frequently and stop the experiment when the estimated causal effect is statistically significant; this practice is often called "peeking." Unfortunately, peeking invalidates the statistical guarantees and quickly leads to a substantial uncontrolled type-1 error. Our paper provides valid confidence sequences from the design-based perspective, where we condition on the full set of potential outcomes and perform inference on the obtained sample. Our design-based confidence sequence accommodates a wide variety of sequential experiments in an assumption-light manner. In particular, we build confidence sequences for 1) the average treatment effect for different individuals arriving sequentially, 2) the reward mean difference in multi-arm bandit settings with adaptive treatment assignments, 3) the contemporaneous treatment effect for single time series experiment with potential carryover effects in the potential outcome, and 4) the average contemporaneous treatment effect in panel experiments. We further provide a variance reduction technique that incorporates modeling assumptions and covariates to reduce the confidence sequence width proportional to how well the analyst can predict the next outcome.
翻译:许多组织进行了数千次随机实验,或A/B测试,从统计上量化和检测产品变化的影响。分析员将这些结果用于围绕部署和投资机会加强决策,使发现影响的时间成为关键优先事项。通常,这些实验是按顺序进行的;但分析只在研究结束时进行。这是不可取的,因为在研究结束之前可以检测到强烈的影响,当治疗效果为负时,这种影响对减轻风险尤其重要。或者,分析员可以更频繁地进行假设测试,并在估计因果关系具有统计意义时停止试验;这种做法常常被称为“显眼”。不幸的是,偷看使统计保证无效,并迅速导致严重不受控制的第1类错误。我们的文件从设计角度提供了有效的信任序列,我们根据全部潜在结果来进行,并对获得的样本进行推断。我们基于设计的信任序列以假设-光度的方式适应一系列广泛的顺序实验。我们特别可以建立信心序列,在以下几个方面:1)对不同个人进行平均比例的处理效果是“显眼的。”