Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
727665 | Measurement | 2011 | 8 Pages |
Compound Gauss–Markoff method for unbiased variance estimation is dissected to analyse separate contributions to the problem of quantifying uncertainty bearing on repeated experiment outcome. On one hand: Gauss’ original treatment of observed quantity values according to least squares principle; on the other hand: Markoff’s reformulation using independent identically distributed (IID) random variables (RVs). In this paper, critical to the construct of IID RVs (and tenability of consequent results) is claimed a clear-cut distinction between identical distribution and identity of RVs. The far-reaching theoretical and practical import is considered, stemming from diversity between a measurand (modelled in RV term) and its (the RV’s variate) measured values. It is shown how the situation can be fit into the vocabulary of metrology, which allows a correct handling of concepts and application of established formulas. Estimation criteria alternative to unbiasedness are explored, and implications on interval estimation and related expression of uncertainty are discussed.