The Sorted Effects Method: Discovering Heterogeneous Effects Beyond Their Averages
Victor Chernozhukov, Ivan Fernandez-Val, and Ye Luo

TL;DR
This paper introduces the sorted effects method to visualize and analyze heterogeneous effects in nonlinear models, providing a comprehensive view beyond average effects and enabling classification of observational units.
Contribution
It proposes a novel approach to estimate and visualize sorted partial effects, including uncertainty quantification and confidence sets, based on new mathematical results on Hadamard differentiability.
Findings
Revealed significant heterogeneity in the gender wage gap.
Demonstrated the effectiveness of sorted effects in visualizing effect distributions.
Provided statistical tools for inference on sorted effects and groups.
Abstract
The partial (ceteris paribus) effects of interest in nonlinear and interactive linear models are heterogeneous as they can vary dramatically with the underlying observed or unobserved covariates. Despite the apparent importance of heterogeneity, a common practice in modern empirical work is to largely ignore it by reporting average partial effects (or, at best, average effects for some groups). While average effects provide very convenient scalar summaries of typical effects, by definition they fail to reflect the entire variety of the heterogeneous effects. In order to discover these effects much more fully, we propose to estimate and report sorted effects -- a collection of estimated partial effects sorted in increasing order and indexed by percentiles. By construction the sorted effect curves completely represent and help visualize the range of the heterogeneous effects in one plot.…
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Taxonomy
TopicsAdvanced Statistical Methods and Models · Forecasting Techniques and Applications · Statistical Methods and Bayesian Inference
