The measurement of treatment (intervention) effects on a single (or just a few) treated unit(s) based on counterfactuals constructed from artificial controls has become a popular practice in applied statistics and economics since the proposal of the synthetic control method. In high-dimensional setting, we often use principal component or (weakly) sparse regression to estimate counterfactuals. Do we use enough data information? To better estimate the effects of price changes on the sales in our case study, we propose a general framework on counterfactual analysis for high dimensional dependent data. The framework includes both principal component regression and sparse linear regression as specific cases. It uses both factor and idiosyncratic components as predictors for improved counterfactual analysis, resulting a method called Factor-Adjusted Regularized Method for Treatment (FarmTreat) evaluation. We demonstrate convincingly that using either factors or sparse regression is inadequate for counterfactual analysis in many applications and the case for information gain can be made through the use of idiosyncratic components. We also develop theory and methods to formally answer the question if common factors are adequate for estimating counterfactuals. Furthermore, we consider a simple resampling approach to conduct inference on the treatment effect as well as bootstrap test to access the relevance of the idiosyncratic components. We apply the proposed method to evaluate the effects of price changes on the sales of a set of products based on a novel large panel of sale data from a major retail chain in Brazil and demonstrate the benefits of using additional idiosyncratic components in the treatment effect evaluations.
翻译:从合成控制法提案以来,基于人为控制所构建反事实的单一(或只是少数)处理处理单位(治疗)效应的衡量(干预)对单一(或仅少数)处理单位的影响,自合成控制法提案以来,在应用统计和经济学方面已成为流行的做法。在高维环境下,我们经常使用主要成分或(微弱)稀释回归法来估计反事实。我们是否使用足够的数据信息信息?为了更好地估计价格变化对我们案例研究中高维依赖度数据销售的影响,我们提出了一个关于反事实分析的一般框架。框架包括主要成分回归和稀少的线性回归作为具体案例。它使用因素和特异性成分作为预测因素,作为改进反事实分析的预测工具,从而形成一种叫作保理调整的治疗方法(FarmTreat)来估计反事实事实。我们令人信服地证明,在许多应用的反事实分析中,使用微缩缩缩缩写回归法的理由可以通过使用特质的成分来评估信息收益。我们还开发理论和方法来正式回答问题,如果共同因素足以估算零售中主要成本分析方法的大规模分析结果,我们考虑如何评估。