A study on short-term vegetable price prediction based on the CNN-LSTM-Attention model

Abstract In view of the lack of consideration of uncertainty factors in vegetable price prediction research and that short-term vegetable price prediction is crucial for stabilizing the industry's development, this paper focuses on the Chinese vegetable market. From the standpoint of perfecting...

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Bibliographic Details
Main Authors: Weijia Bao, Wuzheng Su, Xin Zhao, Jiayu Zhuang
Format: Article
Language:English
Published: Springer 2025-06-01
Series:Discover Food
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Online Access:https://doi.org/10.1007/s44187-025-00426-2
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Summary:Abstract In view of the lack of consideration of uncertainty factors in vegetable price prediction research and that short-term vegetable price prediction is crucial for stabilizing the industry's development, this paper focuses on the Chinese vegetable market. From the standpoint of perfecting feature variables, we add the Baidu index with extreme weather as the keyword and the Chinese economic policy uncertainty index as the new feature variables, while analyzing whether using the CNN-LSTM deep learning model with attention mechanism can increase the accuracy of short-term vegetable price predictions. Additionally, determine whether using China's economic policy uncertainty index and the Baidu index with extreme weather as the keyword can increase the accuracy of short-term vegetable price predictions. Firstly, the study uses Spearman correlation to rank the correlations of the variables. Secondly, it uses the TVP-VAR model to analyze the time-varying effects of the Baidu and China Economic Policy Uncertainty indices on the vegetable price index. Lastly, it uses the control variable method and fuses the CNN-LSTM-Attention model to test the effectiveness of the additional feature variables. According to the experimental results, RMSE, MAE, MAPE and R2 are 2.37, 1.78, 1.00% and 0.75, respectively. Benchmark research results indicate that the model's short-term prediction ability can be considerably enhanced by using the Baidu index and the China economic policy uncertainty index with extreme weather as the keywords.
ISSN:2731-4286