Affiliation:
1. School of Economics and Management University of Chinese Academy of Sciences Beijing China
2. MOE Social Science Laboratory of Digital Economic Forecasts and Policy Simulation at UCAS Beijing China
3. Institutes of Science and Development Chinese Academy of Sciences Beijing China
4. School of Public Policy and Management University of Chinese Academy of Sciences Beijing China
Abstract
AbstractForecasting complex time series faces a huge challenge due to its high volatility. To improve the accuracy and robustness of prediction, this paper proposes a bi‐level ensemble learning approach by combining decomposition‐ensemble forecasting and resample strategies. The bi‐level ensemble approach consists of four steps: data decomposition via singular spectrum analysis (SSA), resampling by employing a bagging algorithm, individual forecasting utilizing extreme learning machine (ELM), and introducing sorting‐pruning and simple addition ensemble strategies for integrating the inner and outer results, respectively. To verify the effectiveness of the established forecasting approach, three exchange rate time series are selected as samples. The results reveal that the proposed model is significantly better than the other benchmarks at different lead times, which indicates that it can be regarded as an effective and promising tool for complex time series forecasting.
Funder
Fundamental Research Funds for the Central Universities
National Natural Science Foundation of China
China Postdoctoral Science Foundation
Subject
Management Science and Operations Research,Statistics, Probability and Uncertainty,Strategy and Management,Computer Science Applications,Modeling and Simulation,Economics and Econometrics
Cited by
28 articles.
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