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On inferring the probability of misclassification by the linear discriminant function
Authors:S John
Institution:(1) Australian National University, Canberra
Abstract:Summary Let the two alternative populationsP 1 andP 2 from which the individual with measurements χ may have come beN(μ(1), Σ) andN(μ(2), Σ). Then the classification rule with minimum risk is to assign the individual toP 1 orP 2 according as (μ(2)-μ(1))′Σ-1 x≶(1/2)(μ(2)-μ(1))′Σ-1(μ(1)+μ(2))+c wherec is a constant depending on the prior probabilities ofP 1 andP 2 and the costs of the two kinds of misclassification. The probability of misclassifying an individual fromP 2 by this rule is π21=Φ(-δ/2+cδ-1), where Φ(.) is the distribution function of anN(0, 1) and 
$$\delta  = \sqrt {\left\{ {\left( {\mu (2) - \mu (1)} \right)^\prime  \sum\nolimits_{}^{ - 1} {\left( {\mu (2) - \mu (1)} \right)} } \right\}}$$
. (Since we are free to choose which population we shall callP 2, it is not necessary to consider separately the probability of misclassifying an individual fromP 1.) LetP 21 denote the probability of misclassification of an individual fromP 2 by the rule derived from the one mentioned by fixing μ(1), μ(2) and Σ at estimates 
$$\bar x(1), \bar x(2)$$
andV and letP 21 * be the probability of misclassification of an individual fromP 2 when the classification rule is the one with minimum risk among those based on 
$$\left( {\bar x(2) - \bar x(1)} \right)^\prime  V^{ - 1} x$$
. The fiducial distributions of π21,P 21 andP 21 * are determined. Point estimates and confidence intervals for π21,P 21 andP 21 * are derived. Only easily available tables are needed to make fiducial inferences. An incidental result of some interest elsewhere as well is the distribution of a linear combination of a chi and an independent normal variable.
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