Databases covering all individuals of a population are
increasingly used for research and decision-making. The massive
size of such databases is often mistaken as a guarantee for
valid inferences. However, population data have characteristics
that make them challenging to use. Various assumptions on
population coverage and data quality are commonly made,
including how such data were captured and what types of
processing have been applied to them. Furthermore, the full
potential of population data can often only be unlocked when
such data are linked to other databases. Record linkage often
implies subtle technical problems, which are easily missed. We
discuss a diverse range of myths and misconceptions relevant for
anybody capturing, processing, linking, or analysing population
data. Remarkably, many of these myths and misconceptions are due
to the social nature of data collections and are therefore
missed by purely technical accounts of data processing. Many are
also not well documented in scientific publications. We conclude
with a set of recommendations for using population data.
%0 Journal Article
%1 Christen2023-ou
%A Christen, Peter
%A Schnell, Rainer
%D 2023
%I Swansea University
%J Int. J. Popul. Data Sci.
%K administrative data editing errors linkage personal quality record
%N 1
%P 2115
%T Thirty-three myths and misconceptions about population data: from data capture and processing to linkage
%V 8
%X Databases covering all individuals of a population are
increasingly used for research and decision-making. The massive
size of such databases is often mistaken as a guarantee for
valid inferences. However, population data have characteristics
that make them challenging to use. Various assumptions on
population coverage and data quality are commonly made,
including how such data were captured and what types of
processing have been applied to them. Furthermore, the full
potential of population data can often only be unlocked when
such data are linked to other databases. Record linkage often
implies subtle technical problems, which are easily missed. We
discuss a diverse range of myths and misconceptions relevant for
anybody capturing, processing, linking, or analysing population
data. Remarkably, many of these myths and misconceptions are due
to the social nature of data collections and are therefore
missed by purely technical accounts of data processing. Many are
also not well documented in scientific publications. We conclude
with a set of recommendations for using population data.
@article{Christen2023-ou,
abstract = {Databases covering all individuals of a population are
increasingly used for research and decision-making. The massive
size of such databases is often mistaken as a guarantee for
valid inferences. However, population data have characteristics
that make them challenging to use. Various assumptions on
population coverage and data quality are commonly made,
including how such data were captured and what types of
processing have been applied to them. Furthermore, the full
potential of population data can often only be unlocked when
such data are linked to other databases. Record linkage often
implies subtle technical problems, which are easily missed. We
discuss a diverse range of myths and misconceptions relevant for
anybody capturing, processing, linking, or analysing population
data. Remarkably, many of these myths and misconceptions are due
to the social nature of data collections and are therefore
missed by purely technical accounts of data processing. Many are
also not well documented in scientific publications. We conclude
with a set of recommendations for using population data.},
added-at = {2025-01-08T12:06:15.000+0100},
author = {Christen, Peter and Schnell, Rainer},
biburl = {https://puma.scadsai.uni-leipzig.de/bibtex/26c48aa3f6011c7051b82f969e46d7a43/scadsfct},
interhash = {54b31cb4d33c16276fb1a97b74d4c168},
intrahash = {6c48aa3f6011c7051b82f969e46d7a43},
journal = {Int. J. Popul. Data Sci.},
keywords = {administrative data editing errors linkage personal quality record},
language = {en},
month = jan,
number = 1,
pages = 2115,
publisher = {Swansea University},
timestamp = {2025-01-08T12:06:15.000+0100},
title = {Thirty-three myths and misconceptions about population data: from data capture and processing to linkage},
volume = 8,
year = 2023
}