Generalizations of Principal Component Analysis, Optimization Problems, and Neural Networks

 KARHUNEN Juha
 Helsinki University of Technology

 JOUTSENSALO Jyrki
 Helsinki University of Technology
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Author(s)

 KARHUNEN Juha
 Helsinki University of Technology

 JOUTSENSALO Jyrki
 Helsinki University of Technology
Journal

 Neural Networks

Neural Networks 8(4), 549562, 19950601
References: 49

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