Title
Partially autoregressive machine learning: Development and testing of methods to predict United States Air Force retention
Abstract
Establishing effective personnel management policies in the United States Air Force (USAF) requires methods to predict the number of personnel remaining in the USAF for different lengths of time in the future. Defined as the Personnel Retention Problem (PRP), determining this type of aggregate survival rate is a time series regression problem that shares many characteristics with binary classification problems. The limitations of this particular structure are particularly difficult to overcome for problems with limited data like the USAF PRP. We develop and test several machine learning models to produce improved retention predictions compared to the USAF’s current Kaplan Meier model. In addition to traditional random forest models and feedforward neural networks, we propose the inclusion of a partially autoregressive feature to extend the benefits of low-capacity autoregressive techniques to higher-capacity machine learning techniques. We present a Partially Autoregressive Neural Network (PARNet) and a Partially Autoregressive Random Forest (PARFor) and test the performance of each technique across a range of hyperparameter values. We select the superlative model using a validation dataset, compare results to the existing benchmark model, and find a 62.8% reduction in aggregate prediction error for the baseline neural network and 34.8% reduction for the PARNet.
Year
DOI
Venue
2022
10.1016/j.cie.2022.108424
Computers & Industrial Engineering
Keywords
DocType
Volume
Autoregressive,Machine learning,Time series,Personnel retention
Journal
171
ISSN
Citations 
PageRank 
0360-8352
0
0.34
References 
Authors
0
4
Name
Order
Citations
PageRank
Joseph C. Hoecherl100.34
Matthew J. Robbins200.34
Brett J. Borghetti300.34
Raymond R. Hill400.34