BANDWIDTH SELECTION IN SUPPORT VECTOR DATA DESCRIPTION FOR OUTLIER IDENTIFICATION

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United States of America Patent

APP PUB NO 20190042977A1
SERIAL NO

15887037

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A computing device employs machine learning and determines a bandwidth parameter value for a support vector data description (SVDD). A mean pairwise distance value is computed between observation vectors. A scaling factor value is computed based on a number of the plurality of observation vectors and a predefined tolerance value. A Gaussian bandwidth parameter value is computed using the computed mean pairwise distance value and the computed scaling factor value. An optimal value of an objective function is computed that includes a Gaussian kernel function that uses the computed Gaussian bandwidth parameter value. The objective function defines a SVDD model using the plurality of observation vectors to define a set of support vectors. The computed Gaussian bandwidth parameter value and the defined a set of support vectors are output for determining if a new observation vector is an outlier.

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Patent OwnerAddress
SAS INSTITUTE INCSAS CAMPUS DRIVE CARY NC 27513

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Inventor(s)

Inventor Name Address # of filed Patents Total Citations
Chaudhuri, Arin Raleigh, US 18 121
Gonzalez, Laura Lucia Raleigh, US 1 1
Kakde, Deovrat Vijay Cary, US 15 68
Kong, Seung Hyun Cary, US 10 106
Sadek, Carol Wagih Chapel Hill, US 4 7

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