Reply to: Comments on “Fisher–Schultz Lecture: Generic Machine Learning Inference on Heterogeneous Treatment Effects in Randomized Experiments, With an Application to Immunization in India”
Author(s)
Chernozhukov, Victor; Demirer, Mert; Duflo, Esther; Fernández-Val, Iván
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We warmly thank Kosuke Imai, Michael Lingzhi Li, and Stefan Wager for their gracious and insightful comments. We are particularly encouraged that both pieces recognize the importance of the research agenda the lecture laid out, which we see as critical for applied researchers. It is also great to see that both underscore the potential of the basic approach we propose—targeting summary features of the CATE after proxy estimation with sample splitting.
We are also happy that both papers push us (and the reader) to continue thinking about the inference problem associated with sample splitting. We recognize that our current paper is only scratching the surface of this interesting agenda. Our proposal is certainly not the only option, and it is exciting that both papers provide and assess alternatives. Hopefully, this will generate even more work in this area.
Date issued
2025-07-30Department
Massachusetts Institute of Technology. Department of Economics; Statistics and Data Science Center (Massachusetts Institute of Technology); Sloan School of ManagementJournal
Econometrica
Publisher
Wiley
Citation
Chernozhukov, V., Demirer, M., Duflo, E. and Fernández-Val, I. (2025), Reply to: Comments on “Fisher–Schultz Lecture: Generic Machine Learning Inference on Heterogeneous Treatment Effects in Randomized Experiments, With an Application to Immunization in India”. Econometrica, 93: 1177-1181.
Version: Final published version