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Linear Variance, P-splines and Neighbour Differences for Spatial Adjustment in Field Trials: How are they Related?

Martin P. Boer (), Hans-Peter Piepho () and Emlyn R. Williams ()
Additional contact information
Martin P. Boer: Wageningen University and Research
Hans-Peter Piepho: University of Hohenheim
Emlyn R. Williams: Australian National University

Journal of Agricultural, Biological and Environmental Statistics, 2020, vol. 25, issue 4, No 12, 676-698

Abstract: Abstract Nearest-neighbour methods based on first differences are an approach to spatial analysis of field trials with a long history, going back to the early work by Papadakis first published in 1937. These methods are closely related to a geostatistical model that assumes spatial covariance to be a linear function of distance. Recently, P-splines have been proposed as a flexible alternative to spatial analysis of field trials. On the surface, P-splines may appear like a completely new type of method, but closer scrutiny reveals intimate ties with earlier proposals based on first differences and the linear variance model. This paper studies these relations in detail, first focussing on one-dimensional spatial models and then extending to the two-dimensional case. Two yield trial datasets serve to illustrate the methods and their equivalence relations. Parsimonious linear variance and random walk models are suggested as a good point of departure for exploring possible improvements of model fit via the flexible P-spline framework.

Keywords: Linear mixed model; Geostatistics; Spatial correlation; Sweep operator; Random walk (search for similar items in EconPapers)
Date: 2020
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Citations: View citations in EconPapers (1)

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DOI: 10.1007/s13253-020-00412-4

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