Abstract

Soybean is an important crop, so it is very important to forecast soybean price trend, which can stabilize the market. This paper presents a Synthesis Method with Multistage Model (SMwMM) in order to identify and forecast soybean price trend in China. In the previous work,Toeplitz Inverse Covariance-based Clustering(TICC) has been applied to cluster the prices of four variables. The research have found that there are four patterns in soybean market price, which could be explained by economic theory. This paper consider four patterns as market risk levels. Based on the clustering results, we used Long short-term memory(LSTM) to forecast the prices of these four variables. Multivariate long short-term memory(MLSTM) is then used to classify soybean price to determine level of risk . Experimental results show that :(1)The LSTM model has achieved great fitting effect and high prediction accuracy;(2) The performance of MLSTM-FCN and MALSTM-FCN is better than that of LSTM-FCN and ALSTM-FCN. Furthermore,MALSTM-FCN had the higher accuracy than MLSTM-FCN, which reached 76.39%.

Highlights

  • The soybean is an important source of high quality protein for human beings and an important raw material of edible oil

  • This paper presents a synthesis method with multistage model (SMwMM) in order to identify and forecast soybean price trend in China

  • MALSTM-FCN had a higher accuracy than Multivariate long short-term memory (MLSTM)-FCN, which reached 76.39%

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Summary

Introduction

The soybean is an important source of high quality protein for human beings and an important raw material of edible oil. The breeding industry needs a large amount of feed, which is mainly composed of corn and soybean. Soybean price directly affects soybean production, farmer income, animal husbandry cost and the stability of agricultural products market (Li, 2014). Soybean plays such an important role in breeding industry that soybean price affects meat price. The fluctuation of soybean price affects the development of agriculture, the quality of consumer life and the overall stability of market economy (Qian, 2017). And accurate prediction for soybean price trend enables the government to make corresponding decisions in time and stabilize the market (Jiang, 2018).

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