Support vector machines based on convex risk functions and general norms
Year of publication: |
February 2017
|
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Authors: | Gotoh, Jun-ya ; Uryasev, Stan |
Published in: |
Applied optimization and data mining : dedicated to Dr. Panos Pardalos on the occasion of his 60th birthday. - New York, NY, USA : Springer. - 2017, p. 301-328
|
Subject: | Mustererkennung | Pattern recognition | Robustes Verfahren | Robust statistics |
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