Most similar neighbor: an improved sampling inference procedure for natural resource planning

To model ecosystem functioning for landscape design, analysts would like detailed data about each parcel of land in the landscape. Usually, only information of low resolution is available for the entire area, supplemented by detailed information for a sample of the parcels. These sample data, usuall...

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Veröffentlicht in:Forest science 1995-05, Vol.41 (2), p.337-359
Hauptverfasser: Moeur, M. (Intermountain Research Station, USDA Forest Service, Moscow, ID.), Stage, A.R
Format: Artikel
Sprache:eng
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Zusammenfassung:To model ecosystem functioning for landscape design, analysts would like detailed data about each parcel of land in the landscape. Usually, only information of low resolution is available for the entire area, supplemented by detailed information for a sample of the parcels. These sample data, usually obtained through two-phase sampling, provide initial values of important design elements for dynamic, often nonlinear, models of ecosystem functioning. However, to represent the contribution of the nonsampled portions of the landscape to ecosystem functioning, it would be convenient to be able to operate as if the detailed design information were available for each and every parcel in the analysis. Inference procedures to complete the design information for the unsampled parcels have usually followed the techniques of stratified or regression sampling. These procedures have been developed with regard to their efficiency for estimating population means and totals rather than for their utility to model ecosystem functioning and response to intervention. Stratified sampling or regression estimates therefore do not retain the complex relationships between multivariate design attributes. We present a new multivariate inference procedure for use in such circumstances. In place of estimating design attributes element-by-element in a traditional sense for each first-phase observation, the procedure simply chooses the most similar parcel from the set of parcels with detailed examinations to act as its stand-in. The stand-in is chosen on the basis of a similarity measure that summarizes the multivariate relationships between the set of low resolution indicator attributes and the set of detailed design attributes derived from the second-phase sample. Canonical correlation analysis is used to derive a similarity function for this procedure, which we call "Most Similar Neighbor Inference"
ISSN:0015-749X
1938-3738
DOI:10.1093/forestscience/41.2.337