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Least Squares Estimation Using Sketched Data with Heteroskedastic Errors

Machine Learning 2022-06-23 v3 Machine Learning Econometrics

Abstract

Researchers may perform regressions using a sketch of data of size mm instead of the full sample of size nn for a variety of reasons. This paper considers the case when the regression errors do not have constant variance and heteroskedasticity robust standard errors would normally be needed for test statistics to provide accurate inference. We show that estimates using data sketched by random projections will behave `as if' the errors were homoskedastic. Estimation by random sampling would not have this property. The result arises because the sketched estimates in the case of random projections can be expressed as degenerate UU-statistics, and under certain conditions, these statistics are asymptotically normal with homoskedastic variance. We verify that the conditions hold not only in the case of least squares regression when the covariates are exogenous, but also in instrumental variables estimation when the covariates are endogenous. The result implies that inference, including first-stage F tests for instrument relevance, can be simpler than the full sample case if the sketching scheme is appropriately chosen.

Keywords

Cite

@article{arxiv.2007.07781,
  title  = {Least Squares Estimation Using Sketched Data with Heteroskedastic Errors},
  author = {Sokbae Lee and Serena Ng},
  journal= {arXiv preprint arXiv:2007.07781},
  year   = {2022}
}

Comments

42 pages, 4 tables. Accepted for presentation at ICML 2022

R2 v1 2026-06-23T17:08:37.240Z