Least squares prediction in linear models with integer unknowns.

The prediction of spatially and/or temporal varying variates based on observations of these variates at some locations in space and/or instances in time, is an important topic in the various spatial and Earth sciences disciplines. This topic has been extensively studied, albeit under different names...

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Main Author: Teunissen, Peter.
Format: Journal Article
Language:English
Published: 2007
Subjects:
Online Access:http://hdl.handle.net/20.500.11937/31274
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author Teunissen, Peter.
author_facet Teunissen, Peter.
author_sort Teunissen, Peter.
building Curtin Institutional Repository
collection Online Access
description The prediction of spatially and/or temporal varying variates based on observations of these variates at some locations in space and/or instances in time, is an important topic in the various spatial and Earth sciences disciplines. This topic has been extensively studied, albeit under different names. The underlying model used is often of the trend-signal-noise type. This model is quite general and it encompasses many of the conceivable measurements. However, the methods of prediction based on these models have only been developed for the case the trend parameters are real-valued. In the present contribution we generalize the theory of least-squares prediction by permitting some or all of the trend parameters to be integer valued. We derive the solution for least-squares prediction in linear models with integer unknowns and show how it compares to the solution of ordinary least-squares prediction. We also study the probabilistic properties of the associated estimation and prediction errors. The probability density functions of these errors are derived and it is shown how they are driven by the probability mass functions of the integer estimators. Finally, we show how these multimodal distributions can be used for constructing confidence regions and for cross-validation purposes aimed at testing the validity of the underlying model.
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spelling curtin-20.500.11937-312742017-09-13T15:52:04Z Least squares prediction in linear models with integer unknowns. Teunissen, Peter. Integer Based Least Squares Prediction - Integer Estimation - Least Squares Collocation - Model - Multimodal Distribution - Real Integer Mixed Linear The prediction of spatially and/or temporal varying variates based on observations of these variates at some locations in space and/or instances in time, is an important topic in the various spatial and Earth sciences disciplines. This topic has been extensively studied, albeit under different names. The underlying model used is often of the trend-signal-noise type. This model is quite general and it encompasses many of the conceivable measurements. However, the methods of prediction based on these models have only been developed for the case the trend parameters are real-valued. In the present contribution we generalize the theory of least-squares prediction by permitting some or all of the trend parameters to be integer valued. We derive the solution for least-squares prediction in linear models with integer unknowns and show how it compares to the solution of ordinary least-squares prediction. We also study the probabilistic properties of the associated estimation and prediction errors. The probability density functions of these errors are derived and it is shown how they are driven by the probability mass functions of the integer estimators. Finally, we show how these multimodal distributions can be used for constructing confidence regions and for cross-validation purposes aimed at testing the validity of the underlying model. 2007 Journal Article http://hdl.handle.net/20.500.11937/31274 10.1007/s00190-007-0138-0 en restricted
spellingShingle Integer Based Least Squares Prediction - Integer Estimation - Least Squares Collocation - Model - Multimodal Distribution - Real Integer Mixed Linear
Teunissen, Peter.
Least squares prediction in linear models with integer unknowns.
title Least squares prediction in linear models with integer unknowns.
title_full Least squares prediction in linear models with integer unknowns.
title_fullStr Least squares prediction in linear models with integer unknowns.
title_full_unstemmed Least squares prediction in linear models with integer unknowns.
title_short Least squares prediction in linear models with integer unknowns.
title_sort least squares prediction in linear models with integer unknowns.
topic Integer Based Least Squares Prediction - Integer Estimation - Least Squares Collocation - Model - Multimodal Distribution - Real Integer Mixed Linear
url http://hdl.handle.net/20.500.11937/31274