Back to Search Start Over

From German Internet Panel to Mannheim Corona Study: Adaptable probability-based online panel infrastructures during the pandemic

Authors :
Cornesse, Carina
Krieger, Ulrich
Sohnius, Marie-Lou
Fikel, Marina
Friedel, Sabine
Rettig, Tobias
Wenz, Alexander
Juhl, Sebastian
Lehrer, Roni
Möhring, Katja
Naumann, Elias
Reifenscheid, Maximiliane
Blom, Annelies G.
Cornesse, Carina
Krieger, Ulrich
Sohnius, Marie-Lou
Fikel, Marina
Friedel, Sabine
Rettig, Tobias
Wenz, Alexander
Juhl, Sebastian
Lehrer, Roni
Möhring, Katja
Naumann, Elias
Reifenscheid, Maximiliane
Blom, Annelies G.
Source :
Journal of the Royal Statistical Society, Series A (Statistics in Society); 1411-1437
Publication Year :
2022

Abstract

The outbreak of COVID-19 has sparked a sudden demand for fast, frequent and accurate data on the societal impact of the pandemic. This demand has highlighted a divide in survey data collection: Most probability-based social surveys, which can deliver the necessary data quality to allow valid inference to the general population, are slow, infrequent and ill-equipped to survey people during a lockdown. Most non-probability online surveys, which can deliver large amounts of data fast, frequently and without interviewer contact, however, cannot provide the data quality needed for population inference. Well aware of this chasm in the data landscape, at the onset of the pandemic, we set up the Mannheim Corona Study (MCS), a rotating panel survey with daily data collection on the basis of the long-standing probability-based online panel infrastructure of the German Internet Panel (GIP). The MCS has provided academics and political decision makers with key information to understand the social and economic developments during the early phase of the pandemic. This paper describes the panel adaptation process, demonstrates the power of the MCS data on its own and when linked to other data sources, and evaluates the data quality achieved by the MCS fast-response methodology.

Details

Database :
OAIster
Journal :
Journal of the Royal Statistical Society, Series A (Statistics in Society); 1411-1437
Publication Type :
Electronic Resource
Accession number :
edsoai.on1355169730
Document Type :
Electronic Resource