Options
KriMI: A Multiple Imputation Approach for Preserving Spatial Dependencies : Imputation of Regional Price Indices using the Example of Bavaria
Bleninger, Sara (2017): KriMI: A Multiple Imputation Approach for Preserving Spatial Dependencies : Imputation of Regional Price Indices using the Example of Bavaria, Bamberg: University of Bamberg Press, doi: 10.20378/irbo-50298.
Faculty/Chair:
Author:
Publisher Information:
Year of publication:
2017
Pages:
ISBN:
978-3-86309-523-9
978-3-86309-524-6
Supervisor:
Source/Other editions:
Parallel erschienen als Druckausg. in der University of Bamberg Press, 2017 (22,50 EUR)
Language:
English
Remark:
Dissertation, Otto-Friedrich-Universität Bamberg, 2017
Link to order the print version:
DOI:
Licence:
Abstract:
Multiple imputation is a method to handle the problem of missing values in a dataset. As it accounts for the uncertainty brought in by the missing data, it is possible to conduct reliable statistical tests after this method has been implemented.
Kriging uses neighbourhood effects to predict values of unobserved regions. It can be seen as an imputation technique. The unobserved regions are missing data points, and the kriging predictions are the imputations. Due to the fact of being a single imputation technique, no proper statistical inferences are possible after filling the dataset.
If spatially dependent data face the problem of missing data and a proper statistical inference is needed, a modelling of the spatial correlation in the multiple imputation model is needed. Here this is prevailed by implementing kriging in the model used for multiple imputation. We call the resulting method KriMI.
The exact problem can be found when looking at regional price levels in Bavaria. The Bavarian State Office for Statistics surveys the prices which are needed to compute the price index only in a few regions. The prices of the unobserved regions are treated as missing data.
Kriging uses neighbourhood effects to predict values of unobserved regions. It can be seen as an imputation technique. The unobserved regions are missing data points, and the kriging predictions are the imputations. Due to the fact of being a single imputation technique, no proper statistical inferences are possible after filling the dataset.
If spatially dependent data face the problem of missing data and a proper statistical inference is needed, a modelling of the spatial correlation in the multiple imputation model is needed. Here this is prevailed by implementing kriging in the model used for multiple imputation. We call the resulting method KriMI.
The exact problem can be found when looking at regional price levels in Bavaria. The Bavarian State Office for Statistics surveys the prices which are needed to compute the price index only in a few regions. The prices of the unobserved regions are treated as missing data.
GND Keywords: ; ; ; ;
Bayern
Preisindex
Kriging
Fehlende Daten
Räumliche Statistik
Keywords: ; ; ; ;
multiple imputation
kriging
spatial dependencies
regional prices
price index
DDC Classification:
RVK Classification:
Type:
Doctoralthesis
Activation date:
January 31, 2018
Permalink
https://fis.uni-bamberg.de/handle/uniba/42645