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On the Optimality of Randomization in Experimental Design: How to
  Randomize for Minimax Variance and Design-Based Inference

On the Optimality of Randomization in Experimental Design: How to Randomize for Minimax Variance and Design-Based Inference

6 May 2020
Nathan Kallus
ArXiv (abs)PDFHTML

Papers citing "On the Optimality of Randomization in Experimental Design: How to Randomize for Minimax Variance and Design-Based Inference"

1 / 1 papers shown
Title
Synthetic Principal Component Design: Fast Covariate Balancing with
  Synthetic Controls
Synthetic Principal Component Design: Fast Covariate Balancing with Synthetic Controls
Yiping Lu
Jiajin Li
Lexing Ying
Jose H. Blanchet
52
2
0
28 Nov 2022
1