Comparison Non-Parametric Machine Learning Algorithms for Prediction of Employee Talent
I Ketut Adi Wirayasa(1*), Arko Djajadi(2), H andri Santoso(3), Eko Indrajit(4)
(1) Department of Computer Science, Universitas Pradita, Banten
(2) Department of Computer Science, Universitas Pradita, Banten
(3) Department of Computer Science, Universitas Pradita, Banten
(4) Department of Computer Science, Universitas Pradita, Banten
(*) Corresponding Author
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DOI: https://doi.org/10.22146/ijccs.69366
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