Nontraditional approaches to statistical classification: Some perspectives on \(L_ p\)-norm methods

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Publication:1374275

DOI10.1023/A:1018958001886zbMath0888.90161MaRDI QIDQ1374275

Antonie Stam

Publication date: 8 June 1998

Published in: Annals of Operations Research (Search for Journal in Brave)




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