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Impact of bias in predicted height on tree volume estimation: A case-study of intrinsic nonlinearity
Authors:Rune stergaard Pedersen  Jens Peter Skovsgaard
Institution:aUniversity of Copenhagen, Forest & Landscape Denmark, Hørsholm Kongevej 11, DK-2970 Hørsholm, Denmark
Abstract:Bias originating from intrinsic nonlinearity in nonlinear models is caused by excess curvature in the solution locus of parameter estimates derived from least squares procedures. Bias due to intrinsic nonlinearity varies according to sample size as well as model specification. This paper analyses consequences of fractionising data into smaller sub-samples. Based on measurements of stem diameter and total tree height from the first Danish national forest inventory, it is demonstrated how data splitting at random may cause the intrinsic nonlinear curvature to exceed the critical F-value. Application of a Taylor-series expansion shows that, for all practical purposes, the bias in predictions of individual tree volume (based on stem diameter and tree height) is negligible. To minimize residual variance, intrinsic curvature and, in turn, prediction bias, it is recommended that data be stratified according to site conditions, stand characteristics or other relevant criteria. Finally, the preferred model should exhibit close-to-linear behaviour.
Keywords:Bias in regression predictor  Box's bias  Forest inventory data  Intrinsic curvature  Nonlinear regression  Parameter effects curvature  Sample size  Wood volume estimation
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