Publication | Closed Access
Input variable selection for neural networks: application to predicting the U.S. business cycle
61
Citations
11
References
2002
Year
Unknown Venue
Forecasting MethodologyEngineeringMachine LearningBusiness IntelligenceBusiness AnalyticsInput Variable SelectionEconomic ForecastingData ScienceManagementEconomic AnalysisRegression ModelStatisticsQuantitative ManagementEconomicsU.s. Business CyclePredictive AnalyticsPredictive ModelingNonlinear ForecastingComputer ScienceNeural NetworksForecastingFinanceIntelligent ForecastingBest SubsetProduction ForecastingBusiness Forecasting
Selecting a "best subset" of input variables is a critical issue in forecasting. This is especially true when the number of available input series is large, and an exhaustive search through all combinations of variables is computationally infeasible. Inclusion of irrelevant variables not only doesn't help prediction, but can reduce forecasting accuracy through added noise or systematic bias. We demonstrate a technique called "sensitivity-based pruning" (SBP) that removes irrelevant input variables from a nonlinear forecasting or regression model. The technique makes use of a saliency measure computed for each input variable and uses estimates of prediction risk for determining the number of input variables to prune. We present preliminary results of the SBP technique applied to neural network predictors of a key business cycle measure, the US Index of Industrial Production.
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