Time Series Treatment Effects Analysis with Always-Missing Controls

Shu, Juan, Han, Qiyu, Chen, George, Cao, Xihao, Luo, Kangming, Pallotta, Dan, Agrawal, Shivam, Lu, Yuping, Zhang, Xiaoyu, Mansoor, Jawad, Anand, Jyoti

arXiv.org Machine Learning 

Estimating treatment effects in time series data presents a significant challenge, especially when the control group is always unobservable. For example, in analyzing the effects of Christmas on retail sales, we lack direct observation of what would have occurred in late December without the Christmas's impact. To address this, we try to recover the control group in the event period while accounting for confounders and temporal dependencies. Experimental results on the M5 Walmart retail sales data demonstrate robust estimation of the potential outcome of the control group as well as accurate predicted holiday effect. Furthermore, we provided theoretical guarantees for the estimated treatment effect, proving its consistency and asymptotic normality. The proposed methodology is applicable not only to this always-missing control scenario but also in other conventional time series causal inference settings.

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