Quadratic discriminant analysis (QDA) is a classical and flexible classification approach, which allows differences between groups not only due to mean vectors but also covariance matrices. Modern high-dimensional data bring us opportunities and also challenges. In the framework of classical QDA, the inverse of each sample covariance matrix is essential, but high-dimensionality causes singularity in sample covariance matrices. To overcome this technical difficulty, several high-dimensional QDA approaches with desirable theoretical properties emerge in recent years. We are to discuss the challenges, some existing works, and possibly several future directions with regard to high-dimensional QDA.
机构:
Osaka Univ, Dept Math, Grad Sch Sci, Toyonaka, Osaka 5600043, Japan
Japan Soc Promot Sci, Tokyo, JapanOsaka Univ, Dept Math, Grad Sch Sci, Toyonaka, Osaka 5600043, Japan
Ayano, Takanori
Suzuki, Joe
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机构:
Osaka Univ, Dept Math, Grad Sch Sci, Toyonaka, Osaka 5600043, JapanOsaka Univ, Dept Math, Grad Sch Sci, Toyonaka, Osaka 5600043, Japan
机构:
Osaka Univ, Dept Math, Grad Sch Sci, Toyonaka, Osaka 5600043, Japan
Japan Soc Promot Sci, Tokyo, JapanOsaka Univ, Dept Math, Grad Sch Sci, Toyonaka, Osaka 5600043, Japan
Ayano, Takanori
Suzuki, Joe
论文数: 0引用数: 0
h-index: 0
机构:
Osaka Univ, Dept Math, Grad Sch Sci, Toyonaka, Osaka 5600043, JapanOsaka Univ, Dept Math, Grad Sch Sci, Toyonaka, Osaka 5600043, Japan