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Sparse Multiple Index Modelsfor High-dimensional Nonparametric Forecasting

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posted on 2025-07-23, 02:15 authored by Nuwani K Palihawadana, Rob J Hyndman, Xiaoqian Wang
Forecasting often involves high-dimensional predictors which have nonlinear relationships with theoutcome of interest. Nonparametric additive index models can capture these relationships, while addressing the curse of dimensionality. This paper introduces a new algorithm, Sparse Multiple Index (SMI) Modelling, tailored for estimating high-dimensional nonparametric/semi-parametric additive index models, while limiting the number of parameters to estimate, by optimising predictor selectionand predictor grouping. The SMI Modelling algorithm uses an iterative approach based on mixed integer programming to solve an L0-regularised nonlinear least squares optimisation problem withlinear constraints. We demonstrate the performance of the proposed algorithm through a simulation study, along with two empirical applications to forecast heat-related daily mortality and daily solarintensity.<p></p>

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Creation date

2024-07-20

Working Paper Series Number

16/24

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application/pdf

Handle

RePEc:msh:ebswps:2024-16

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