A comparative study of the leading machine learning techniques and two new optimization algorithms
Year of publication: |
1 February 2019
|
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Authors: | Baumann, Philipp ; Hochbaum, D. S. ; Yang, Y. T. |
Published in: |
European journal of operational research : EJOR. - Amsterdam : Elsevier, ISSN 0377-2217, ZDB-ID 243003-4. - Vol. 272.2019, 3 (1.2.), p. 1041-1057
|
Subject: | Data mining | Supervised machine learning | Binary classification | Comparative study | Supervised normalized cut | Data Mining | Künstliche Intelligenz | Artificial intelligence | Algorithmus | Algorithm |
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