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Reflection on modern methods: demystifying robust standard errors for epidemiologists

Plots, charts and numbers

Standard errors are usually calculated based on assumptions underpinning the statistical model used in the estimation. However, there are situations in which some assumptions of the statistical model including the variance or covariance of the outcome across observations are violated, which leads to biased standard errors.