๐”– Bobbio Scriptorium
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Learning vector quantization for (dis-)similarities

โœ Scribed by Hammer, Barbara; Hofmann, Daniela; Schleif, Frank-Michael; Zhu, Xibin


Book ID
121720249
Publisher
Elsevier Science
Year
2014
Tongue
English
Weight
464 KB
Volume
131
Category
Article
ISSN
0925-2312

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