@article{PostClassKohler2020, author = {Post, Julia C. and Class, Fabian and Kohler, Ulrich}, title = {Unit nonresponse biases in estimates of SARS-CoV-2 prevalence}, series = {Survey research methods}, volume = {14}, journal = {Survey research methods}, number = {2}, publisher = {European Survey Research Association}, address = {Duisburg}, issn = {1864-3361}, doi = {10.18148/srm/2020.v14i2.7755}, pages = {115 -- 121}, year = {2020}, abstract = {Since COVID-19 became a pandemic, many studies are being conducted to get a better understanding of the disease itself and its spread. One crucial indicator is the prevalence of SARS-CoV-2 infections. Since this measure is an important foundation for political decisions, its estimate must be reliable and unbiased. This paper presents reasons for biases in prevalence estimates due to unit nonresponse in typical studies. Since it is difficult to avoid bias in situations with mostly unknown nonresponse mechanisms, we propose the maximum amount of bias as one measure to assess the uncertainty due to nonresponse. An interactive web application is presented that calculates the limits of such a conservative unit nonresponse confidence interval (CUNCI).}, language = {en} }