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Multivariate Regression Trees for Analysis of Abundance Data
by
Larsen, David R.
, Speckman, Paul L.
in
Biometrics
/ Biometry
/ Cluster Analysis
/ Consultant's Forum
/ Data Interpretation, Statistical
/ Datasets
/ Ecology - statistics & numerical data
/ Ecosystem
/ Flowers & plants
/ Forest ecology
/ Forest soils
/ Forests
/ Geology
/ Linear regression
/ Missouri
/ Multivariate Analysis
/ Multivariate regression
/ Plant roots
/ Plants
/ prediction
/ Regression analysis
/ Regression trees
/ Soil depth
/ Species
/ Trees
2004
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Multivariate Regression Trees for Analysis of Abundance Data
by
Larsen, David R.
, Speckman, Paul L.
in
Biometrics
/ Biometry
/ Cluster Analysis
/ Consultant's Forum
/ Data Interpretation, Statistical
/ Datasets
/ Ecology - statistics & numerical data
/ Ecosystem
/ Flowers & plants
/ Forest ecology
/ Forest soils
/ Forests
/ Geology
/ Linear regression
/ Missouri
/ Multivariate Analysis
/ Multivariate regression
/ Plant roots
/ Plants
/ prediction
/ Regression analysis
/ Regression trees
/ Soil depth
/ Species
/ Trees
2004
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Multivariate Regression Trees for Analysis of Abundance Data
by
Larsen, David R.
, Speckman, Paul L.
in
Biometrics
/ Biometry
/ Cluster Analysis
/ Consultant's Forum
/ Data Interpretation, Statistical
/ Datasets
/ Ecology - statistics & numerical data
/ Ecosystem
/ Flowers & plants
/ Forest ecology
/ Forest soils
/ Forests
/ Geology
/ Linear regression
/ Missouri
/ Multivariate Analysis
/ Multivariate regression
/ Plant roots
/ Plants
/ prediction
/ Regression analysis
/ Regression trees
/ Soil depth
/ Species
/ Trees
2004
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Multivariate Regression Trees for Analysis of Abundance Data
Journal Article
Multivariate Regression Trees for Analysis of Abundance Data
2004
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Overview
Multivariate regression tree methodology is developed and illustrated in a study predicting the abundance of several cooccurring plant species in Missouri Ozark forests. The technique is a variation of the approach of Segal (1992) for longitudinal data. It has the potential to be applied to many different types of problems in which analysts want to predict the simultaneous cooccurrence of several dependent variables. Multivariate regression trees can also be used as an alternative to cluster analysis in situations where clusters are defined by a set of independent variables and the researcher wants clusters as homogeneous as possible with respect to a group of dependent variables.
Publisher
Blackwell Publishing,International Biometric Society,Blackwell Publishing Ltd
Subject
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