Communication-efficient distributed estimation for high-dimensional large-scale linear regression
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DOI: 10.1007/s00184-022-00878-x
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References listed on IDEAS
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Keywords
Distributed optimization; SCAD; Adaptive LASSO; GEL function; Modified proximal ADMM algorithm;All these keywords.
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