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Development of International Agricultural Trade Using Data Mining Algorithms-Based Trade Equality

机译:基于数据挖掘算法的国际农业贸易的发展

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The development of international agriculture trade during the COVID-19 pandemic has encountered significant challenges. The processing of international agricultural trade data using machine learning techniques needs to be improved to perform effective analysis of agricultural trade. An essential issue for international agricultural trade is the accurate yield estimation for the numerous crops involved in international trade. Data mining techniques are the necessary approach for accomplishing practical and effective solutions for this problem. This paper combined the bidirectional encoder representations from transformers (BERT) model to conduct data mining and developed a trade data analysis system with efficient data analysis capabilities. Our results indicate that our model does reasonably well and obtains adequate information in deciding international agricultural trade. It can also be instrumental for policy and decision-making regarding international agricultural trade.
机译:Covid-19大流行期间国际农业贸易的发展遇到了重大挑战。 需要改进使用机器学习技术的国际农业贸易数据处理,以对农业贸易进行有效分析。 国际农业贸易的重要问题是国际贸易众多作物的准确收益率估计。 数据挖掘技术是实现此问题的实用和有效解决方案的必要方法。 本文组合了来自变压器(BERT)模型的双向编码器表示来进行数据挖掘,并开发出具有有效数据分析功能的交易数据分析系统。 我们的结果表明,我们的型号确实很好地做得很好,并在决定国际农业贸易方面获得足够的信息。 它也可以有助于国际农业贸易的政策和决策。

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