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Improved Design of Quadratic Discriminant Analysis Classi er in Unbalanced Settings
2020
The use of quadratic discriminant analysis (QDA) or its regularized version (RQDA) for classi cation is often not recommended, due to its well-acknowledged high sensitivity to the estimation noise of the covariance matrix. This becomes all the more the case in unbalanced data settings for which it has been found that R-QDA becomes equivalent to the classi er that assigns all observations to the same class. In this paper, we propose an improved R-QDA that is based on the use of two
doi:10.25781/kaust-97sg9
fatcat:4yhbtbgu3vgulngche6c46ztmy