Probabilistic household forecasts based on register data- the case of Denmark and Finland

BACKGROUND Household forecasts are important for public planning and for predicting consumer demand. OBJECTIVE The purpose of this paper is to compute probabilistic household forecasts for Finland and Denmark, taking advantage of unique housing register data covering the whole populations dating bac...

Full description

Bibliographic Details
Main Authors: Solveig Christiansen, Nico Keilman
Format: Article
Language:English
Published: Max Planck Institute for Demographic Research 2013-06-01
Series:Demographic Research
Online Access:http://www.demographic-research.org/volumes/vol28/43/
id doaj-a193dfd78ad0476f9e6628f73dabb0b1
record_format Article
spelling doaj-a193dfd78ad0476f9e6628f73dabb0b12020-11-24T20:55:56ZengMax Planck Institute for Demographic ResearchDemographic Research1435-98712013-06-012843Probabilistic household forecasts based on register data- the case of Denmark and FinlandSolveig ChristiansenNico KeilmanBACKGROUND Household forecasts are important for public planning and for predicting consumer demand. OBJECTIVE The purpose of this paper is to compute probabilistic household forecasts for Finland and Denmark, taking advantage of unique housing register data covering the whole populations dating back to the 1980s. A major advantage is that we do not have to rely on small population samples, and we can get quite reliable estimates even for infrequent transitions. A further merit is having time series containing the population in different household positions (dependent child, living with a spouse, living in a consensual union, living alone, lone parent, living in other private household and institutional households) by age and sex. METHODS These series enable us to estimate the uncertainty in the future distribution of the population across household positions. Combining these uncertainty parameters with expected shares computed in a deterministic household forecast, we simulate 3000 sample paths for the household shares for each age and sex. These paths are then combined with 3000 simulations from a stochastic population forecast covering the same period to obtain the predicted number of households and persons in each household position by age and sex. RESULTS According to our forecasts, we expect a strong growth in the number of private households during a 30-year period, of 27Š in Finland and 13Š in Denmark. The number of households consisting of a married couple or a person who lives alone are the most certain, and single parents and other private households are the most uncertain. http://www.demographic-research.org/volumes/vol28/43/
collection DOAJ
language English
format Article
sources DOAJ
author Solveig Christiansen
Nico Keilman
spellingShingle Solveig Christiansen
Nico Keilman
Probabilistic household forecasts based on register data- the case of Denmark and Finland
Demographic Research
author_facet Solveig Christiansen
Nico Keilman
author_sort Solveig Christiansen
title Probabilistic household forecasts based on register data- the case of Denmark and Finland
title_short Probabilistic household forecasts based on register data- the case of Denmark and Finland
title_full Probabilistic household forecasts based on register data- the case of Denmark and Finland
title_fullStr Probabilistic household forecasts based on register data- the case of Denmark and Finland
title_full_unstemmed Probabilistic household forecasts based on register data- the case of Denmark and Finland
title_sort probabilistic household forecasts based on register data- the case of denmark and finland
publisher Max Planck Institute for Demographic Research
series Demographic Research
issn 1435-9871
publishDate 2013-06-01
description BACKGROUND Household forecasts are important for public planning and for predicting consumer demand. OBJECTIVE The purpose of this paper is to compute probabilistic household forecasts for Finland and Denmark, taking advantage of unique housing register data covering the whole populations dating back to the 1980s. A major advantage is that we do not have to rely on small population samples, and we can get quite reliable estimates even for infrequent transitions. A further merit is having time series containing the population in different household positions (dependent child, living with a spouse, living in a consensual union, living alone, lone parent, living in other private household and institutional households) by age and sex. METHODS These series enable us to estimate the uncertainty in the future distribution of the population across household positions. Combining these uncertainty parameters with expected shares computed in a deterministic household forecast, we simulate 3000 sample paths for the household shares for each age and sex. These paths are then combined with 3000 simulations from a stochastic population forecast covering the same period to obtain the predicted number of households and persons in each household position by age and sex. RESULTS According to our forecasts, we expect a strong growth in the number of private households during a 30-year period, of 27Š in Finland and 13Š in Denmark. The number of households consisting of a married couple or a person who lives alone are the most certain, and single parents and other private households are the most uncertain.
url http://www.demographic-research.org/volumes/vol28/43/
work_keys_str_mv AT solveigchristiansen probabilistichouseholdforecastsbasedonregisterdatathecaseofdenmarkandfinland
AT nicokeilman probabilistichouseholdforecastsbasedonregisterdatathecaseofdenmarkandfinland
_version_ 1716791430620381184