Seunghyun Kong - Academia.edu (original) (raw)

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Papers by Seunghyun Kong

Research paper thumbnail of Peak Criterion for Kernel Bandwidth Selection for Support Vector Data Description

Support Vector Data Description (SVDD) is a machine-learning technique used for single class clas... more Support Vector Data Description (SVDD) is a machine-learning technique used for single class classification and outlier detection. SVDD formulation with kernel function provides a flexible boundary around data. The value of kernel function parameters affects the nature of the data boundary. For example, it is observed that with a Gaussian kernel, as the value of kernel bandwidth is lowered, the data boundary changes from spherical to wiggly. The spherical data boundary leads to underfitting, and an extremely wiggly data boundary leads to overfitting. In this paper, we propose an empirical criterion to obtain good values of the Gaussian kernel bandwidth parameter. This criterion provides a smooth boundary that captures the essential geometric features of the data.

Research paper thumbnail of LINEAR PROGRAMMING ALGORITHMS USING LEAST-SQUARES METHOD

Research paper thumbnail of Peak Criterion for Kernel Bandwidth Selection for Support Vector Data Description

Support Vector Data Description (SVDD) is a machine-learning technique used for single class clas... more Support Vector Data Description (SVDD) is a machine-learning technique used for single class classification and outlier detection. SVDD formulation with kernel function provides a flexible boundary around data. The value of kernel function parameters affects the nature of the data boundary. For example, it is observed that with a Gaussian kernel, as the value of kernel bandwidth is lowered, the data boundary changes from spherical to wiggly. The spherical data boundary leads to underfitting, and an extremely wiggly data boundary leads to overfitting. In this paper, we propose an empirical criterion to obtain good values of the Gaussian kernel bandwidth parameter. This criterion provides a smooth boundary that captures the essential geometric features of the data.

Research paper thumbnail of LINEAR PROGRAMMING ALGORITHMS USING LEAST-SQUARES METHOD

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