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Victor Chernozhukov

Researcher at Massachusetts Institute of Technology

Publications -  374
Citations -  25283

Victor Chernozhukov is an academic researcher from Massachusetts Institute of Technology. The author has contributed to research in topics: Estimator & Quantile. The author has an hindex of 73, co-authored 370 publications receiving 20588 citations. Previous affiliations of Victor Chernozhukov include Amazon.com & New Economic School.

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L1-Penalized quantile regression in high-dimensional sparse models

TL;DR: In this article, the authors consider quantile regression penalized by the L 1 norm of coefficients (L1-QR) and show that L1QR correctly selects the true minimal model as a valid submodel when the non-zero coefficients of the true model are well separated from zero.
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Counterfactual: An R Package for Counterfactual Analysis

TL;DR: The Counterfactual package as discussed by the authors implements the estimation and inference methods of Chernozhukov, Fernandez-Val and Melly (2013) for counterfactual analysis for quantile treatment effects and wage decompositions.
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DoubleML -- An Object-Oriented Implementation of Double Machine Learning in Python

TL;DR: DoubleML as mentioned in this paper implements the double/debiased machine learning framework of Chernozhukov et al. and provides functionalities to estimate parameters in causal models based on machine learning methods.
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Deeply-Debiased Off-Policy Interval Estimation

TL;DR: In this article, a deeply debiasing procedure is proposed to construct an efficient, robust, and flexible confidence interval on a target policy's value, which is justified by theoretical results and numerical experiments.
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The Impact of Big Data on Firm Performance: An Empirical Investigation

TL;DR: In this article, the authors examined the effect of the number of products and time periods for which a product is available for sale on the accuracy of weekly retail product forecasts using a proprietary data set obtained from Amazon.