Banka Ödemelerinde Dolandırıcılığın Çizge Madenciliği ve Makine Öğrenimi Algoritmalarıyla Tespiti
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Anahtar Kelimeler
References
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Details
Primary Language
Turkish
Subjects
-
Journal Section
Research Article
Authors
Hande Çavşi Zaim
*
This is me
0000-0002-9032-5145
Türkiye
Esra Yolaçan
0000-0002-0008-1037
Türkiye
Eyyüp Gülbandılar
This is me
0000-0001-5559-5281
Türkiye
Publication Date
September 29, 2021
Submission Date
August 8, 2021
Acceptance Date
September 25, 2021
Published in Issue
Year 2021 Volume: 12 Number: 4