E105-08 - Forschungsbereich Angewandte Statistik E101-03 - Forschungsbereich Scientific Computing and Modelling
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Journal:
Computational Statistics & Data Analysis
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ISSN:
0167-9473
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Date (published):
Apr-2022
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Number of Pages:
20
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Peer reviewed:
Yes
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Keywords:
Applied Mathematics; Computational Mathematics; Computational Theory and Mathematics; Prediction; Regression; Large sample size; Mean subspace; Nonparametric; Statistics and Probability
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Abstract:
Neural networks are combined with sufficient dimension reduction methodology in order to remove the limitation of small p and n of the latter. NN-SDR applies when the dependence of the response Y on a set of predictors X is fully captured by the regression function , for an unknown function g and low rank parameter B matrix. It is shown that the proposed estimator is on par with competing sufficient dimension reduction methods, such as minimum average variance estimation and conditional variance estimation, in small p and n settings in simulations. Its main advantage is its scalability in regressions with large data, for which the other methods are infeasible.
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Research Areas:
Mathematical Methods in Economics: 65% Modelling and Simulation: 35%