大豆期货的非线性分析与预测

IF 1.9 4区 经济学 Q2 AGRICULTURAL ECONOMICS & POLICY
T. Yin, Yiming Wang
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引用次数: 3

摘要

本文采用混沌人工神经网络(CANN)技术对交易最广泛的农产品期货——大豆期货进行价格预测。非线性存在性检验结果表明,大豆期货的时间序列具有多重分形动力学、长期依赖性、自相似性和混沌特性。这也为CANN模型的构建提供了基础。与作为基准系统的人工神经网络(ANN)结构相比,CANN的可预测性要高得多。该方法基于高斯核函数,仅适用于非平稳信号的局部逼近,无法逼近全局的非线性混沌隐藏模式。提高大豆期货价格的预测精度对投资者、大豆生产者和决策者都具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nonlinear analysis and prediction of soybean futures
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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来源期刊
Agricultural Economics-Zemedelska Ekonomika
Agricultural Economics-Zemedelska Ekonomika Agricultural Economics & Policy-
CiteScore
4.30
自引率
4.50%
发文量
47
审稿时长
30 weeks
期刊介绍: An international peer-reviewed journal published under the auspices of the Czech Academy of Agricultural Sciences and financed by the Ministry of Agriculture of the Czech Republic. Published since 1954 (by 1999 under the title Zemědělská ekonomika).Thematic scope: original scientific papers dealing with agricultural subjects from the sphere of economics, management, informatics, ecology, social economy and sociology. Since 1993 the papers continually treat problems which were published in the journal Sociologie venkova a zemědělství until now. An extensive scope of subjects in fact covers the whole of agribusiness, that means economic relations of suppliers and producers of inputs for agriculture and food industry, problems from the aspects of social economy and rural sociology and finally the economics of the population nutrition. Papers are published in English.
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