mRSC: Multi-dimensional Robust Synthetic Control
Muhummad Amjad, Vishal Misra, Devavrat Shah, Dennis Shen

TL;DR
This paper introduces mRSC, a multi-dimensional extension of Robust Synthetic Control, which improves estimation accuracy when limited pre-intervention data is available by incorporating multiple metrics and providing validation tools.
Contribution
We propose a novel multi-dimensional RSC method that leverages multiple metrics for better synthetic control estimation and introduce validation and diagnostic tools for its performance assessment.
Findings
mRSC provides consistent estimates with improved error decay rates.
The method outperforms traditional RSC in synthetic and real-world case studies.
Validation tools effectively assess the utility of additional metrics.
Abstract
When evaluating the impact of a policy on a metric of interest, it may not be possible to conduct a randomized control trial. In settings where only observational data is available, Synthetic Control (SC) methods provide a popular data-driven approach to estimate a "synthetic" control by combining measurements of "similar" units (donors). Recently, Robust SC (RSC) was proposed as a generalization of SC to overcome the challenges of missing data high levels of noise, while removing the reliance on domain knowledge for selecting donors. However, SC, RSC, and their variants, suffer from poor estimation when the pre-intervention period is too short. As the main contribution, we propose a generalization of unidimensional RSC to multi-dimensional RSC, mRSC. Our proposed mechanism incorporates multiple metrics to estimate a synthetic control, thus overcoming the challenge of poor inference…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Advanced Bandit Algorithms Research · Statistical Methods and Inference
