Article ID Journal Published Year Pages File Type
4603331 Linear Algebra and its Applications 2006 13 Pages PDF
Abstract

We study the geometry of datasets, using an extension of the Fisher linear discriminant to the case of singular covariance, and a new regularization procedure. A dataset is called linearly separable if its different clusters can be reliably separated by a linear hyperplane. We propose a measure of linear separability, easily computed as an angle that arises naturally in our analysis. This angle of separability assumes values between 0 and π/2, with high [resp. low] values corresponding to datasets that are linearly separable, resp. inseparable.

Related Topics
Physical Sciences and Engineering Mathematics Algebra and Number Theory