Authors
Bianca NI Eskelson, Hailemariam Temesgen, Valerie Lemay, Tara M Barrett, Nicholas L Crookston, Andrew T Hudak
Publication date
2009/6/1
Source
Scandinavian Journal of Forest Research
Volume
24
Issue
3
Pages
235-246
Publisher
Taylor & Francis Group
Description
Almost universally, forest inventory and monitoring databases are incomplete, ranging from missing data for only a few records and a few variables, common for small land areas, to missing data for many observations and many variables, common for large land areas. For a wide variety of applications, nearest neighbor (NN) imputation methods have been developed to fill in observations of variables that are missing on some records (Y-variables), using related variables that are available for all records (X-variables). This review attempts to summarize the advantages and weaknesses of NN imputation methods and to give an overview of the NN approaches that have most commonly been used. It also discusses some of the challenges of NN imputation methods. The inclusion of NN imputation methods into standard software packages and the use of consistent notation may improve further development of NN …
Total citations
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Scholar articles
BNI Eskelson, H Temesgen, V Lemay, TM Barrett… - Scandinavian Journal of Forest Research, 2009