pone.0294557.s005.docx (36.12 kB)
Importance matrix of the variables in the random forest (XGBoost) model).
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posted on 2023-12-13, 18:26 authored by Feike J. Loots, Marleen Smits, Kevin Jenniskens, Artuur M. Leeuwenberg, Paul H. J. Giesen, Lotte Ramerman, Robert Verheij, Arthur R. H. van Zanten, Roderick P. VenekampImportance matrix of the variables in the random forest (XGBoost) model).
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