n the present study, 13 covariates have been selected as potentially associ- ated with 3 metrics of the spread of COVID-19 in 20 European countries. Robustness of the linear correlations between 10 of the 13 covariates as main regressors and the 3 COVID-19 metrics as dependent variables have been tested through a method- ology for sensitivity analysis that falls under the name of "Multiverse". Under this methodology, thousands of alternative estimates are generated by a single hypothesis of regression. The capacity of identification of a robust causal claim for the 10 vari- ables has been measured through 3 indicators over a Janus Confusion Matrix, which is a confusion matrix that assumes the likelihood to observe a True claim as the ratio between the absolute difference of estimates with a different sign and the total of estimates. This methodology provides the opportunity to evaluate the outcomes of a shift from the common level of significance α = .05 to the alternative α = .005. According to the results of the study, in the dataset the benefits of the shifts come at a very high cost in terms of false negatives.

Multiversal Methods in Observational Studies: The Case of COVID-19

Tomaselli V.
Primo
;
Cantone G. G.;Miracula V.
2023-01-01

Abstract

n the present study, 13 covariates have been selected as potentially associ- ated with 3 metrics of the spread of COVID-19 in 20 European countries. Robustness of the linear correlations between 10 of the 13 covariates as main regressors and the 3 COVID-19 metrics as dependent variables have been tested through a method- ology for sensitivity analysis that falls under the name of "Multiverse". Under this methodology, thousands of alternative estimates are generated by a single hypothesis of regression. The capacity of identification of a robust causal claim for the 10 vari- ables has been measured through 3 indicators over a Janus Confusion Matrix, which is a confusion matrix that assumes the likelihood to observe a True claim as the ratio between the absolute difference of estimates with a different sign and the total of estimates. This methodology provides the opportunity to evaluate the outcomes of a shift from the common level of significance α = .05 to the alternative α = .005. According to the results of the study, in the dataset the benefits of the shifts come at a very high cost in terms of false negatives.
2023
978-3-031-16608-2
multiverse analysis, model mis-specification, p-hacking, significance level, COVID-19
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.11769/533063
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