Abstract

Reconstruction of realistic economic data often causes social economists to analyze the underlying driving factors in time-series data or to study volatility. The intrinsic complexity of time-series data interests and attracts social economists. This paper proposes the bilateral permutation entropy (BPE) index method to solve the problem based on partly ensemble empirical mode decomposition (PEEMD), which was proposed as a novel data analysis method for nonlinear and nonstationary time series compared with the T-test method. First, PEEMD is extended to the case of gold price analysis in this paper for decomposition into several independent intrinsic mode functions (IMFs), from high to low frequency. Second, IMFs comprise three parts, including a high-frequency part, low-frequency part, and the whole trend based on a fine-to-coarse reconstruction by the BPE index method and the T-test method. Then, this paper conducts a correlation analysis on the basis of the reconstructed data and the related affected macroeconomic factors, including global gold production, world crude oil prices, and world inflation. Finally, the BPE index method is evidently a vitally significant technique for time-series data analysis in terms of reconstructed IMFs to obtain realistic data.

Highlights

  • Mathematical Problems in Engineering decomposition-ensemble model with reconstructed intrinsic mode functions (IMFs) for forecasting crude oil prices based on the well-known autoregressive moving average (ARIMA) model

  • Is paper proposes an economic meaning reconstruction method based on the bilateral permutation entropy (BPE) index [18] to classify high- and low-frequency data, which compares the chaos degree of the synthetic signal and the adjacent IMFs, based on the frequency relationship between IMFs, ignoring the independent distribution of frequencies in the IMFs compared with the T-test reconstruction method

  • Is paper selects gold data as the application object, which are a crucial foundation of the international monetary system and play an important role in national economic security, financial stability, and national defense security, especially in the context of the deterioration of the international financial environment and international political turmoil [19, 20]. is paper utilizes the T-test method and the BPE method to divide the IMFs into high-frequency data, low-frequency data, and trending partial data based on the partly ensemble empirical mode decomposition (PEEMD) [7]. en, a correlation analysis between composited data and related factors is proposed to explain the rationality of the new composition method for gold price analysis

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Summary

Process of Data Analysis

According to the above analysis, first, the time-series data are decomposed by PEEMD to obtain orthogonal IMFs; the short-term trend and long-term trends are composed of the BPE index and T-test for comparison.

Application in Gold Data
Composition
Full Text
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