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How non-normality affects the quadratic discriminant function
Authors:William R Clarke  Peter A Lachenbruch  Barabara Broffitt
Institution:Dept. of Preventive Madicine , University of IOWA , Iowa City, 50011, Iowa
Abstract:The quadratic discriminant function is commonly used for the two group classification problem when the covariance matrices in the two populations are substantially unequal. This procedure is optimal when both populations are multivariate normal with known means and covariance matrices. This study examined the robustness of the QDF to non-normality. Sampling experiments were conducted to estimate expected actual error rates for the QDF when sampling from a variety of non-normal distributions. Results indicated that the QDF was robust to non-normality except when the distributions were highly skewed, in which case relatively large deviations from optimal were observed. In all cases studied the average probabilities of misclassification were relatively stable while the individual population error rates exhibited considerable variability.
Keywords:robustness  quadratic discriminant function  classification
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