"A Comparison of Selected Parametric and Non-Parametric Imputation Methods for Estimating Forest Biomass and Basal Area"
written by Donald Gagliasso, Susan Hummel, Hailemariam Temesgen,
published by Open Journal of Forestry, Vol.4 No.1, 2014
has been cited by the following article(s):
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[26] Anomalies in Landsat Imagery and Imputation
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[28] Evaluation of the spatial linear model, random forest and gradient nearest-neighbour methods for imputing potential productivity and biomass of the Pacific Northwest …
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[29] Evaluation of the spatial linear model, random forest and gradient nearest-neighbour methods for imputing potential productivity and biomass of the Pacific Northwest …
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