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A Review of Research on Price Forecasting Technology of Fresh Agricultural Products

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Published:09 September 2022Publication History

ABSTRACT

The agricultural product market is the most basic part of Chinese market economy, and the price of agricultural products is the core element of the agricultural product market, and its future trend development is the focus of attention. Due to the complex and diverse factors influencing prices, a model must be found that adapts to the characteristics of the independent and dependent variables and reflects the relationship between them. Provide effective price forecasting and decision-making support to agricultural management departments and farmers. Based on the collection of a large number of materials, this paper analyzes the characteristics of the fresh agricultural product market, summarizes the agricultural product price prediction algorithms, analyzes the advantages and disadvantages of these algorithms, and provides support for future price prediction.

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    • Published in

      cover image ACM Other conferences
      ICBDC '22: Proceedings of the 7th International Conference on Big Data and Computing
      May 2022
      143 pages
      ISBN:9781450396097
      DOI:10.1145/3545801

      Copyright © 2022 ACM

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      Publication History

      • Published: 9 September 2022

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