Selection of Air Force Pilot Candidates: A Case Study on the Predictive Accuracy of Discriminant Analysis, Logistic Regression, and Four Neural Network Types

J. Marôco, Rui Bártolo-Ribeiro
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引用次数: 12

Abstract

We evaluated the predictive classification accuracy of discriminant analysis, logistic regression and four neural network typologies (multiple layer perceptrons, radial basis networks, probabilistic neural networks, and linear neural networks) on a flight screening program with a pass–fail criterion using several psychometric tests as predictors. A stepwise (for logistic regression and discriminant analysis) and sensitivity (for neural networks) selection procedure identified spatial visualization, eye–hand–foot coordination, and concentration capacity as significant predictors. Performance on the first few flights of the screening program was also retained as a significant predictor of final score. Regarding the accuracy of predictions, logistic regression showed the highest accuracy (77%), with high sensitivity (92%) but low specificity (31%). Discriminant analysis had high sensitivity (77%) and high specificity (64%). However, it had the second lowest accuracy (74%). The best performing neural network type was the multiple layer perception, which showed high sensitivity (85%), the second highest specificity (47%), and high accuracy (76%). Radial basis networks and probabilistic networks both fail to predict correctly the candidates who fail on the flight screening program (0% specificity).
空军飞行员候选人选择:判别分析、逻辑回归和四种神经网络预测精度的案例研究
我们评估了判别分析、逻辑回归和四种神经网络类型(多层感知器、径向基网络、概率神经网络和线性神经网络)对飞行筛选程序的预测分类准确性,并使用几种心理测试作为预测因子。逐步(逻辑回归和判别分析)和灵敏度(神经网络)选择程序确定空间可视化,眼-手-脚协调和集中能力是重要的预测因素。在筛选程序的前几次飞行中的表现也被保留为最终得分的重要预测因子。关于预测的准确性,逻辑回归显示最高的准确性(77%),具有高灵敏度(92%)但低特异性(31%)。判别分析灵敏度高(77%),特异度高(64%)。然而,它的准确率第二低(74%)。表现最好的神经网络类型是多层感知,它具有高灵敏度(85%),第二高特异性(47%)和高准确性(76%)。径向基网络和概率网络都不能正确预测在飞行筛选程序中失败的候选人(0%特异性)。
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