Abstract

Because of global climate change, lack of arable land, and rapid population growth, the supplies of three major food crops (i.e., rice, wheat, and corn) have been gradually decreasing worldwide. The rapid increase in demand for food has contributed to a continuous rise in food prices, which directly threatens the lives of over 800 million people around the world who are reported to be chronically undernourished. Consequently, food crop price prediction has attracted considerable attention in recent years. Recent integrated forecasting models have developed various feature selection methods (FSMs) to capture fewer, but more important, explanatory variables. However, one major problem is that the future values of these important explanatory variables are not available. Thus, predictions based on these variables are not actually possible. Because an autoregressive integrated moving average (ARIMA) can extract important self-predictor variables with future values that can be calculated, this study incorporates an ARIMA as the FSM for computational intelligence (CI) models to predict three major food crop (i.e., rice, wheat, and corn) prices. Other than the ARIMA, the components of the proposed integrated forecasting models include artificial neural networks (ANNs), support vector regression (SVR), and multivariate adaptive regression splines (MARS). The predictive accuracies of ARIMA, ANN, SVR, MARS, and the proposed integrated model are compared and discussed. Experimental results reveal that the proposed integrated model achieves superior forecasting performance for predicting food crop prices.

Highlights

  • Jm f x = β0 + 〠 βm ∏ Sjm xν j,m − ljm, m=1 j=1 where β0 and βm are the parameters, M is the number of basis functions (BFs), Jm is the number of knots, Sjm takes on values of either 1 or −1 and indicates the right or left sense of the associated step function, ν j, m is the label of the independent variable, and ljm is the knot location

  • Regarding the autoregressive integrated moving average (ARIMA)-artificial neural networks (ANNs) mechanism, we observe that the input vectors I1, I2, I3, and I4 are characterized by Zt−1, Zt−2, Zt−7, and Zt−13 and that the output O can be obtained by performing a nonlinear functional mapping, as shown in (10)

  • Regarding the ARIMA-support vector regression (SVR) mechanism, we observe that the input vectors I1, I2, I3, and I4 are characterized by Zt−1, Zt−2, Zt−7, and Zt−13 and that the output O can be obtained by performing a nonlinear functional mapping, as shown in (17)

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Summary

Introduction

In addition to ARIMA modeling, this study uses CI schemes, including ANN, SVR, and multivariate adaptive regression splines (MARS), for predicting the prices of the three food crops because they allow nonlinearity modeling and provide good forecasting characteristics. Feature selection refers to the process of identifying a subset of relevant explanatory or predictor variables for use during forecasting model construction This subset of variables contains fewer but more important input variables that aid in predicting the outcome. A real monthly dataset was obtained, which contains the prices of rice, wheat, and corn from January 1990 to September 2015 This real dataset makes it possible to compare predictions of food crop prices using single-stage models and integrated models. The final section summarizes our research findings and contains our conclusions

Forecasting Methodologies
Food Crop Price Forecasting
Forecasting Comparison
Findings
Discussion
Conclusion
Full Text
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