Comparison of Machine Learning Techniques for Predictive Modeling of High-Speed Links

Author(s):  
Hanzhi Ma ◽  
Er-Ping Li ◽  
Andreas C. Cangellaris ◽  
Xu Chen
2015 ◽  
Vol 9s3 ◽  
pp. BBI.S29469 ◽  
Author(s):  
Lucas J. Adams ◽  
Ghalib Bello ◽  
Gerard G. Dumancas

The problem of selecting important variables for predictive modeling of a specific outcome of interest using questionnaire data has rarely been addressed in clinical settings. In this study, we implemented a genetic algorithm (GA) technique to select optimal variables from questionnaire data for predicting a five-year mortality. We examined 123 questions (variables) answered by 5,444 individuals in the National Health and Nutrition Examination Survey. The GA iterations selected the top 24 variables, including questions related to stroke, emphysema, and general health problems requiring the use of special equipment, for use in predictive modeling by various parametric and nonparametric machine learning techniques. Using these top 24 variables, gradient boosting yielded the nominally highest performance (area under curve [AUC] = 0.7654), although there were other techniques with lower but not significantly different AUC. This study shows how GA in conjunction with various machine learning techniques could be used to examine questionnaire data to predict a binary outcome.


Author(s):  
Cesar A. Sanchez-Martinez ◽  
Paulo Lopez-Meyer ◽  
Esdras Juarez-Hernandez ◽  
Aaron Desiga-Orenday ◽  
Andres Viveros-Wacher

Symmetry ◽  
2017 ◽  
Vol 9 (9) ◽  
pp. 197 ◽  
Author(s):  
Kamran Siddique ◽  
Zahid Akhtar ◽  
Haeng-gon Lee ◽  
Woongsup Kim ◽  
Yangwoo Kim

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