2024
DOI: 10.1088/1755-1315/1356/1/012089
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An optimal variable importance for machine learning classification models using modified simulated annealing algorithm

A Rusyana,
A H Wigena,
I M Sumertajaya
et al.

Abstract: Each machine learning model will generate a different importance variable even though the method used is the same. Interpreting the variable significance is confusing. This study proposes combining several variable importance measures using a simulated annealing algorithm with an initial solution of mean and mode. The study uses simulation and empirical data. The simulation data are divided into three scenarios: no correlation, moderate correlation, and high correlation among predictor variables. The empirical… Show more

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