4.3 Article

Nonlinear analysis and prediction of soybean futures

期刊

AGRICULTURAL ECONOMICS-ZEMEDELSKA EKONOMIKA
卷 67, 期 5, 页码 200-207

出版社

CZECH ACADEMY AGRICULTURAL SCIENCES
DOI: 10.17221/480/2020-AGRICECON

关键词

artificial neural network (ANN); chaos; forecasting; long-range dependence; multifractal

资金

  1. National Social Science Fund Youth Project [18CJY057]

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The study uses chaotic artificial neural network technology to predict soybean futures prices, demonstrating the feasibility and superiority of the CANN model, as soybean futures exhibit multifractal dynamics, long-range dependence, self-similarity, and chaos characteristics.
We use chaotic artificial neural network (CANN) technology to predict the price of the most widely traded agricultural futures - soybean futures. The nonlinear existence test results show that the time series of soybean futures have multifractal dynamics, long-range dependence, self similarity, and chaos characteristics. This also provides a basis for the construction of a CANN model. Compared with the artificial neural network (ANN) structure as our benchmark system, the predictability of CANN is much higher. The ANN is based on Gaussian kernel function and is only suitable for local approximation of nonstationary signals, so it cannot approach the global nonlinear chaotical hidden pattern. Improving the prediction accuracy of soybean futures prices is of great significance for investors, soybean producers, and decision makers.

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