学术报告(丁鹏 2026.1.9)

Unifying regression-based and design-based causal inference in time-series experiments

发布人:姚璐
主题
Unifying regression-based and design-based causal inference in time-series experiments
活动时间
-
活动地址
新数学楼519
主讲人
丁鹏 副教授(加州大学伯克利分校)
主持人
蒋智超 教授

摘要:Time-series experiments, also called switchback experiments or N-of-1 trials, play increas- ingly important roles in modern applications in medical and industrial areas. Under the potential outcomes framework, recent research has studied time-series experiments from the design-based perspective, relying solely on the randomness in the design to drive the statistical inference. Focusing on simpler statistical methods, we examine the design-based properties of regression- based methods for estimating treatment effects in time-series experiments. We demonstrate that the treatment effects of interest can be consistently estimated using ordinary least squares with an appropriately specified working model and transformed regressors. Our analysis allows for estimating a diverging number of treatment effects simultaneously, and establishes the con- sistency and asymptotic normality of the regression-based estimators. Additionally, we show that asymptotically, the heteroskedasticity and autocorrelation consistent variance estimators provide conservative estimates of the true, design-based variances. Importantly, although our approach relies on regression, our design-based framework allows for misspecification of the regression model.