Publication | Closed Access
Assessing Gradient Boosting in the Reduction of Misclassification Error in the Prediction of Success for Actuarial Majors
12
Citations
3
References
2014
Year
Artificial IntelligenceEngineeringMachine LearningEducationStudent OutcomeText MiningProgram EvaluationClassification MethodData ScienceData MiningClass ImbalanceDecision TreeDecision Tree LearningGradient BoostingActuarial MajorsStatisticsMultiple Classifier SystemPredictive AnalyticsKnowledge DiscoveryEducational Data MiningLearning AnalyticsComputer SciencePrior ImputationRule InductionMisclassification ErrorDecision Trees
This paper provides a relatively new technique for predicting the retention of students in an actuarial mathematics program. The authors utilize data from a previous research study. In that study, logistic regression, classification trees, and neural networks were compared. The neural networks (with prior imputation of missing data) and classification trees (with no imputation required) were most accurate. However, in this paper, we examine the use of gradient boosting to improve the accuracy of classification trees. We focus on trees since they generate transparent rules that are easily interpretable, especially by non-statisticians. Gradient boosting is an enhancement that is applied specifically to decision trees, and we show that it does, at least in this study, improve the classification accuracy of our default tree. The exposition is accessible to readers with an intermediate level of statistics.
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