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Forecasting of Vegetable Prices using STL-LSTM Method

机译:使用STL-LSTM方法预测蔬菜价格

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Agricultural product prices play an important role in the agricultural market. Vegetables have the largest supply and price fluctuations among agricultural products. As vegetables are grown outdoor and their yields change considerably according to meteorological changes, it is difficult to stabilize the supply and prices of vegetables. Thus, vegetables have a large effect on the national economy. Although the government makes many efforts to stabilize the supply and prices of vegetables, but frequent meteorological changes in recent years have led to unstable supply and price fluctuations of vegetables. Therefore, the correct forecasting of vegetable prices is an important issue. To deal with such an issue, this study suggests a vegetable price forecasting model that uses the seasonal-trend-loess (STL) preprocessing method, and long short-term memory (LSTM), a deep learning algorithm. The model was used to forecast monthly prices of vegetables using vegetable price data, meteorological data of chief producing districts, and other data. In this study, the model was applied to Chinese cabbages and radishes in the Korean agricultural market. The results of performance measurement show that the suggested vegetable price forecasting model had forecast accuracies of 92.06% and 88.74%, respectively, about Chinese cabbages and radishes. It is expected that the model can be used for an autonomous adjustment of supply demand and to develop relevant policies in order to save social costs in relation to agricultural product yields.
机译:农产品价格在农业市场发挥着重要作用。蔬菜拥有农产品的最大供应和价格波动。随着蔬菜的种植户外,其收益率根据气象变化而变化,难以稳定蔬菜的供应和价格。因此,蔬菜对国民经济有很大影响。虽然政府使努力稳定蔬菜的供应和价格,但近年来常见的气象变化导致了蔬菜的不稳定供应和价格波动。因此,正确的蔬菜价格预测是一个重要问题。为了处理此类问题,本研究表明,使用季节性趋势 - 黄土(STL)预处理方法和长短期内存(LSTM),深度学习算法的蔬菜价格预测模型。该模型用于预测使用蔬菜价格数据,主要生产区的气象数据和其他数据的蔬菜月度价格。在这项研究中,该模型应用于韩国农业市场的中国卷心菜和萝卜。绩效测量结果表明,建议的蔬菜价格预测模型分别预测了92.06%和88.74%的精度,关于中国卷心菜和萝卜。预计该模型可用于自主调整供需调整,并制定相关政策,以节省与农产品收益率相关的社会成本。

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