The geometry of linear separability in data sets |
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Authors: | Adi Ben-Israel |
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Affiliation: | a Rutcor-Rutgers Center for Operations Research, Rutgers University, 640 Bartholomew Road, Piscataway, NJ 08854-8003, USA b School of Business, Queen’s University, 143 Union Street, Kingston, ON, Canada K7L 3N6 |
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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. |
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Keywords: | Classification Cluster analysis Tikhonov regularization Linear discriminant Separability of datasets |
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