Ensemble Forecasting for Complex Time Series Using Sparse Representation and Neural Networks

Volume: 36, Issue: 2, Pages: 122 - 138
Published: Apr 19, 2016
Abstract
Based on the concept of ‘decomposition and ensemble’, a novel ensemble forecasting approach is proposed for complex time series by coupling sparse representation (SR) and feedforward neural network (FNN), i.e. the SR‐based FNN approach. Three main steps are involved: data decomposition via SR, individual forecasting via FNN and ensemble forecasting via a simple addition method. In particular, to capture various coexisting hidden factors, the...
Paper Details
Title
Ensemble Forecasting for Complex Time Series Using Sparse Representation and Neural Networks
Published Date
Apr 19, 2016
Volume
36
Issue
2
Pages
122 - 138
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