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Main Authors: Ke, Luoma, Zhang, Guangpeng, He, Jibo, Li, Yajing, Li, Yan, Liu, Xufeng, Fang, Peng
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.03345
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author Ke, Luoma
Zhang, Guangpeng
He, Jibo
Li, Yajing
Li, Yan
Liu, Xufeng
Fang, Peng
author_facet Ke, Luoma
Zhang, Guangpeng
He, Jibo
Li, Yajing
Li, Yan
Liu, Xufeng
Fang, Peng
contents With the rapid growth of the aviation industry, there is a need for a large number of flight crew. How to select the right pilots in a cost-efficient manner has become an important research question. In the current study, twenty-three pilots were recruited from China Eastern Airlines, and 23 novices were from the community of Tsinghua University. A novel approach incorporating machine learning and virtual reality technology was applied to distinguish features between these participants with different flight skills. Results indicate that SVM with the MIC feature selection method consistently achieved the highest prediction performance on all metrics with an Accuracy of 0.93, an AUC of 0.96, and an F1 of 0.93, which outperforms four other classifier algorithms and two other feature selection methods. From the perspective of feature selection methods, the MIC method can select features with a nonlinear relationship to sampling labels, instead of a simple filter-out. Our new implementation of the SVM + MIC algorithm outperforms all existing pilot selection algorithms and perhaps provides the first implementation based on eye tracking and flight dynamics data. This study's VR simulation platforms and algorithms can be used for pilot selection and training.
format Preprint
id arxiv_https___arxiv_org_abs_2510_03345
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Pilot selection in the era of Virtual reality: algorithms for accurate and interpretable machine learning models
Ke, Luoma
Zhang, Guangpeng
He, Jibo
Li, Yajing
Li, Yan
Liu, Xufeng
Fang, Peng
Machine Learning
Artificial Intelligence
With the rapid growth of the aviation industry, there is a need for a large number of flight crew. How to select the right pilots in a cost-efficient manner has become an important research question. In the current study, twenty-three pilots were recruited from China Eastern Airlines, and 23 novices were from the community of Tsinghua University. A novel approach incorporating machine learning and virtual reality technology was applied to distinguish features between these participants with different flight skills. Results indicate that SVM with the MIC feature selection method consistently achieved the highest prediction performance on all metrics with an Accuracy of 0.93, an AUC of 0.96, and an F1 of 0.93, which outperforms four other classifier algorithms and two other feature selection methods. From the perspective of feature selection methods, the MIC method can select features with a nonlinear relationship to sampling labels, instead of a simple filter-out. Our new implementation of the SVM + MIC algorithm outperforms all existing pilot selection algorithms and perhaps provides the first implementation based on eye tracking and flight dynamics data. This study's VR simulation platforms and algorithms can be used for pilot selection and training.
title Pilot selection in the era of Virtual reality: algorithms for accurate and interpretable machine learning models
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2510.03345