A novel forward-validation model averaging to select the optimal weight in the decomposition-ensemble-prediction framework
The decomposition-ensemble algorithm, widely used for modeling nonlinear time series data, typically decomposes the target series into oscillation modes, assigning equal weights to all modes for aggregated prediction. However, forecasting performance varies across the decomposed modes due to differences in their characteristics and prediction horizons. This paper introduces a novel decomposition-based model averaging approach that assigns optimized weights to the decomposed modes, thereby enhancing the accuracy of time series forecasts. The proposed model averaging estimator is proven to be asymptotically optimal, achieving the minimum possible quadratic prediction risk. Furthermore, the convergence rates of the estimated weights to the optimal weights, which minimize the expected quadratic loss, are formally established. Simulation studies and empirical applications to stock return forecasting demonstrate the effectiveness of the proposed method.
Associate Professor, doctoral supervisor at the Academy of Mathematics and Systems Science, Chinese Academy of Sciences. Selected for the national youth talent program and the "Youth Talent Support Project" by the China Association for Science and Technology. Research interests include forecast combination, time series analysis and energy economics. Published more than 20 papers in journals such as Journal of Econometrics and European Journal of Operational Research. More than 30 policy research reports and forecast reports have received instructions from national leaders or have been adopted by the General Office of the CPC Central Committee and the General Office of the State Council. Recipient of the "Important Scientific Research Progress Award (2017, 2019)" from the Academy of Mathematics and Systems Science, Chen Jingrun Future Star Award, Guan Zhaozhi Young Researcher Award, and others