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A Study on Propriety of Pilot Aptitude Test Using Phased Analysis of Pilot Training
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 Title & Authors
A Study on Propriety of Pilot Aptitude Test Using Phased Analysis of Pilot Training
Kim, HeeYoung; Kim, SuHwan; Moon, HoSeok;
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 Abstract
It is important to select the personnel with ideal pilot aptitude considering dramatically advancing aircraft performance and complexity of military operations as a consequence to the highly developed science and technology. The opportunity cost lost from dropouts and human error being the first cause of aviation accidents are the realistic reasons for the significance of personnel selection based on their aptitude. This study analyses the ROKAF pilot aptitude test that was improved in 2004, using various classification models. This study discusses the significance of the selected variables along with the direction of ROKAF pilot aptitude test for its development in the future. The accuracy of the classification models was improved by taking into account differing personnel characteristics of individuals on the test.
 Keywords
Pilot Aptitude Test;Logistic Regression;SCAD(Smoothly Clipped Absolute Deviaotin);Deiscion Tree;Random Forest;
 Language
Korean
 Cited by
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