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Generalized mean for feature extraction in one-class classification problems
Authors:Jiyong Oh  Nojun Kwak  Minsik Lee  Chong-Ho Choi
Affiliation:1. Graduate School of Convergence Science and Technology, Seoul National University, Republic of Korea;2. School of Electrical Engineering and Computer Science, ASRI, Seoul National University, Republic of Korea
Abstract:Biased discriminant analysis (BDA), which extracts discriminative features for one-class classification problems, is sensitive to outliers in negative samples. This study focuses on the drawback of BDA attributed to the objective function based on the arithmetic mean in one-class classification problems, and proposes an objective function based on a generalized mean. A novel method is also presented to effectively maximize the objective function. The experimental results show that the proposed method provides better discriminative features than the BDA and its variants.
Keywords:Generalized mean  Biased discriminant analysis  Feature extraction  Dimensionality reduction  One-class classification
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