2021
DOI: 10.1002/sta4.386
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Random projections for quantile ridge regression

Abstract: Quantile regression estimate gives more complete information about the response distribution but is more costly to compute than mean regression. When the dimension is large, a ridge penalty is conventionally used to stabilize the estimate and achieve better bias-variance trade-off. We investigate a random projection approach to ease the computational burden and establish its statistical properties. Monte Carlo studies are carried out to illustrate the computational and statistical properties of the estimates.

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