statisticsmay
Statisticsmay is a coined term used in statistical theory to describe a conditional, uncertainty-aware approach to data analysis. The name blends statistics with the modal verb may, signaling that inferences are inherently contingent on models, data quality, and prior assumptions.
Conceptually, statisticsmay treats inference as a spectrum of plausible models rather than a single “best” model.
Practically, statisticsmay has been framed for analyses in fields with heterogeneous or incomplete data, including epidemiology,
Criticism centers on a lack of standardized definitions and potential ambiguity in what constitutes a satisfactory
See also: model uncertainty, Bayesian model averaging, ensemble methods, robust statistics, data fusion, transparent reporting.