In statistics, an optimality criterion provides a measure of the fit of the data to a given hypothesis, to aid in model selection. A model is designated as the "best" of the candidate models if it gives the best value of an objective function measuring the degree of satisfaction of the criterion used to evaluate the alternative hypotheses.

The term has been used to identify the different criteria that are used to evaluate a phylogenetic tree. For example, in order to determine the best topology between two phylogenetic trees using the maximum likelihood optimality criterion, one would calculate the maximum likelihood score of each tree and choose the one that had the better score. However, different optimality criteria can select different hypotheses. In such circumstances caution should be exercised when making strong conclusions.

Many other disciplines use similar criteria or have specific measures geared toward the objectives of the field. Optimality criteria include maximum likelihood, Bayesian, maximum parsimony, sum of squared residuals, least absolute deviations, and many others.

References

edit

📚 Artikel Terkait di Wikipedia

Optimal experimental design

(eigenvalue) Another design is E-optimality, which maximizes the minimum eigenvalue of the information matrix. S-optimality This criterion maximizes a quantity measuring

Pareto efficiency

nonsatiation to get to a weak Pareto optimum. Constrained Pareto efficiency is a weakening of Pareto optimality, accounting for the fact that a potential

Optimal control

certain optimality criterion is achieved. A control problem includes a cost functional that is a function of state and control variables. An optimal control

Kaldor–Hicks efficiency

Kaldor–Hicks improvements. The Kaldor criterion holds that an activity moves the economy closer to Pareto optimality if the maximum amount the gainers are

Maximum parsimony

phylogenetics and computational phylogenetics, maximum parsimony is an optimality criterion under which the phylogenetic tree that minimizes the total number

Residual sum of squares

indicates a tight fit of the model to the data. It is used as an optimality criterion in parameter selection and model selection. In general, total sum

Distance matrices in phylogeny

a tree-search protocol that seeks to satisfy an explicit optimality criterion. Two optimality criteria are commonly applied to distance data, minimum evolution

Kelly criterion

In probability theory, the Kelly criterion (or Kelly strategy or Kelly bet) is a formula for risk allocation with the sizing a sequence of bets by maximizing