Dear Applied Statistics Workshop Community,


Our next meeting will be on October 18 (12:00 EST). Dae Woong Ham presents "Design-Based Confidence Sequences: A General Approach to Risk Mitigation in Online Experimentation."


<When>

October 18, 12:00 to 1:30 PM, EST

Lunch will be available for pick-up inside CGIS K354.


<Where>

In-person: CGIS K354

Zoom:

https://harvard.zoom.us/j/93217566507?pwd=elBwYjRJcWhlVE5teE1VNDZoUXdjQT09



<Abstract>

Randomized experiments have become the standard method for companies to evaluate the performance of new products or services. In addition to augmenting managers' decision-making, experimentation mitigates risk by limiting the proportion of customers exposed to innovation. Since many experiments are on customers arriving sequentially, a potential solution is to allow managers to ``peek'' at the results when new data becomes available and stop the test if the results are statistically significant. Unfortunately, peeking invalidates the statistical guarantees for standard statistical analysis and leads to uncontrolled type-1 error. Our paper provides valid design-based confidence sequences, sequences of confidence intervals with uniform type-1 error guarantees over time for various sequential experiments in an assumption-light manner. In particular, we focus on finite-sample estimands defined on the study participants as a direct measure of the incurred risks by companies. Our proposed confidence sequences are valid for a large class of experiments, including multi-arm bandits, time series, and panel experiments. We further provide a variance reduction technique incorporating modeling assumptions and covariates. Finally, we demonstrate the effectiveness of our proposed approach through a simulation study and three real-world applications from Netflix. Our results show that by using our confidence sequence, harmful experiments could be stopped after only observing a handful of units; for instance, an experiment that Netflix ran on its sign-up page on 30,000 potential customers would have been stopped by our method on the first day before 100 observations.


<2023 Schedule>

GOV 3009 Website:

https://projects.iq.harvard.edu/applied.stats.workshop-gov3009

Calendar:

https://calendar.google.com/calendar/u/0?cid=Y18zdjkzcGF2OWZqa2tsZHJidTlzbmJobmVkOEBncm91cC5jYWxlbmRhci5nb29nbGUuY29t



Best,

Jialu


--
Jialu Li
Department of Government
Harvard University
jialu_li@g.harvard.edu