@misc{Horabik-Pyzel_Joanna_Improving_2011, author={Horabik-Pyzel, Joanna and Nahorski, Zbigniew (1945– )}, copyright={Creative Commons Attribution BY 4.0 license}, address={Warszawa}, journal={Raport Badawczy = Research Report}, howpublished={online}, year={2011}, publisher={Instytut Badań Systemowych. Polska Akademia Nauk}, publisher={Systems Research Institute. Polish Academy of Sciences}, language={eng}, abstract={This paper presents a novel approach for allocation of spatially correlated data, such as emission inventories, to finer spatial scales, conditional on covariate information observable in a fine grid. Spatial dependence is modelled with the conditional autoregressive structure introduced into a linear model as a random effect. The maximum likelihood approach to inference is employed, and the optimal predictors are developed to assess missing values in a fine grid. An example of ammonia emission inventory is used to illustrate potential usefulness of the proposed technique.}, type={Text}, title={Improving Resolution of Spatial Inventory with a Statistical Inference Approach}, URL={http://www.rcin.org.pl/Content/109523/PDF/RB-2011-20.pdf}, keywords={Metody dezagregacji, Disaggregation methods, Spatial inventory of emissions, Statistical modelling, Przestrzenny spis emisji, Modelowanie statystyczne}, }