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http://dx.doi.org/10.15207/JKCS.2021.12.12.083

Design of e-commerce business model through AI price prediction of agricultural products  

Han, Nam-Gyu (Dept. of Computer Science, Washington State University)
Kim, Bong-Hyun (Dept. of Computer Engineering, Seowon University)
Publication Information
Journal of the Korea Convergence Society / v.12, no.12, 2021 , pp. 83-91 More about this Journal
Abstract
For agricultural products, supply is irregular due to changes in meteorological conditions, and it has high price elasticity. For example, if the supply decreases by 10%, the price increases by 50%. Due to these fluctuations in the prices of agricultural products, the Korean government guarantees the safety of prices to producers through small merchants' auctions. However, when prices plummet due to overproduction, protection measures for producers are insufficient. Therefore, in this paper, we designed a business model that can be used in the electronic transaction system by predicting the price of agricultural products with an artificial intelligence algorithm. To this end, the trained model with the training pattern pairs and a predictive model was designed by applying ARIMA, SARIMA, RNN, and CNN. Finally, the agricultural product forecast price data was classified into short-term forecast and medium-term forecast and verified. As a result of verification, based on 2018 data, the actual price and predicted price showed an accuracy of 91.08%.
Keywords
Agricultural product price; AI prediction; e-Commerce; Prediction model; AI algorithms;
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Times Cited By KSCI : 1  (Citation Analysis)
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