The importance of scale for spatial-confounding bias and precision of spatial regression estimators

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Publication:903318

DOI10.1214/10-STS326zbMath1328.62596arXiv1011.1139WikidataQ42721906 ScholiaQ42721906MaRDI QIDQ903318

Christopher J. Paciorek

Publication date: 5 January 2016

Published in: Statistical Science (Search for Journal in Brave)

Full work available at URL: https://arxiv.org/abs/1011.1139




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