Estimating individual tree growth with the k-nearest neighbour and k-Most Similar Neighbour methods

The purpose of this study was to examine the use of non-parametric methods in estimating tree level growth models. In non-parametric methods the growth of a tree is predicted as a weighted average of the values of neighbouring observations. The selection of the nearest neighbours is b...

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Main Authors: Sironen, Susanna, Kangas, Annika, Maltamo, Matti, Kangas, Jyrki
Format: Article
Language:English
Published: Finnish Society of Forest Science 2001-01-01
Series:Silva Fennica
Online Access:https://www.silvafennica.fi/article/580
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spelling doaj-563b14c59ac74afb88ac7065d0d15c162020-11-25T03:05:52ZengFinnish Society of Forest ScienceSilva Fennica2242-40752001-01-0135410.14214/sf.580Estimating individual tree growth with the k-nearest neighbour and k-Most Similar Neighbour methodsSironen, SusannaKangas, AnnikaMaltamo, MattiKangas, Jyrki The purpose of this study was to examine the use of non-parametric methods in estimating tree level growth models. In non-parametric methods the growth of a tree is predicted as a weighted average of the values of neighbouring observations. The selection of the nearest neighbours is based on the differences between tree and stand level characteristics of the target tree and the neighbours. The data for the models were collected from the areas owned by Kuusamo Common Forest in Northeast Finland. The whole data consisted of 4051 tally trees and 1308 Scots pines (Pinus sylvestris L.) and 367 Norway spruces (Picea abies Karst.). Models for 5-year diameter growth and bark thickness at the end of the growing period were constructed with two different non-parametric methods: the k-nearest neighbour regression and k-Most Similar Neighbour method. Diameter at breast height, tree height, mean age of the stand and basal area of the trees larger than the subject tree were found to predict the diameter growth most accurately. The non-parametric methods were compared to traditional regression growth models and were found to be quite competitive and reliable growth estimators.https://www.silvafennica.fi/article/580
collection DOAJ
language English
format Article
sources DOAJ
author Sironen, Susanna
Kangas, Annika
Maltamo, Matti
Kangas, Jyrki
spellingShingle Sironen, Susanna
Kangas, Annika
Maltamo, Matti
Kangas, Jyrki
Estimating individual tree growth with the k-nearest neighbour and k-Most Similar Neighbour methods
Silva Fennica
author_facet Sironen, Susanna
Kangas, Annika
Maltamo, Matti
Kangas, Jyrki
author_sort Sironen, Susanna
title Estimating individual tree growth with the k-nearest neighbour and k-Most Similar Neighbour methods
title_short Estimating individual tree growth with the k-nearest neighbour and k-Most Similar Neighbour methods
title_full Estimating individual tree growth with the k-nearest neighbour and k-Most Similar Neighbour methods
title_fullStr Estimating individual tree growth with the k-nearest neighbour and k-Most Similar Neighbour methods
title_full_unstemmed Estimating individual tree growth with the k-nearest neighbour and k-Most Similar Neighbour methods
title_sort estimating individual tree growth with the k-nearest neighbour and k-most similar neighbour methods
publisher Finnish Society of Forest Science
series Silva Fennica
issn 2242-4075
publishDate 2001-01-01
description The purpose of this study was to examine the use of non-parametric methods in estimating tree level growth models. In non-parametric methods the growth of a tree is predicted as a weighted average of the values of neighbouring observations. The selection of the nearest neighbours is based on the differences between tree and stand level characteristics of the target tree and the neighbours. The data for the models were collected from the areas owned by Kuusamo Common Forest in Northeast Finland. The whole data consisted of 4051 tally trees and 1308 Scots pines (Pinus sylvestris L.) and 367 Norway spruces (Picea abies Karst.). Models for 5-year diameter growth and bark thickness at the end of the growing period were constructed with two different non-parametric methods: the k-nearest neighbour regression and k-Most Similar Neighbour method. Diameter at breast height, tree height, mean age of the stand and basal area of the trees larger than the subject tree were found to predict the diameter growth most accurately. The non-parametric methods were compared to traditional regression growth models and were found to be quite competitive and reliable growth estimators.
url https://www.silvafennica.fi/article/580
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