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基于因果发现的烟叶化学成分关联性挖掘与含量预测

Correlation mining and chemical content prediction in tobacco leaves based on causal discovery

  • 摘要: 为实现烟叶化学成分含量影响因素的快速挖掘,提高模型对烟叶化学成分的预测能力,研究了一种基于因果发现的烟叶化学成分关联性挖掘与预测方法。以河南省2010—2020气象和烟叶化学成分数据为材料,结合Graphical Lasso与IGCI(Information Geometric Causal Inference)因果推断方法实现了气象因子与烟叶化学成分间的因果关系挖掘;并通过因果关系得到的因果邻接矩阵提出因果权重变换机制,以提高模型的预测性能。结果表明:气象因子与烟叶化学成分间存在影响关系,且关联性分析结果与农业试验的研究结果一致。创建了因果权重变换机制,在对云烟87与中烟100品种的化学成分预测中,83%以上样本的深度学习模型预测效果得到提升。说明该方法可为烟叶化学成分影响因素的挖掘及含量的预测提供支持。

     

    Abstract: To achieve rapid mining of key factors influencing the contents of chemical composition in tobacco leaves and to improve the predictive ability of the models for chemical components in tobacco leaves, a method for correlation mining and chemical content prediction in tobacco leaves based on causal discovery was developed. Taking the meteorological and chemical component data of tobacco leaves in Henan Province from 2010 to 2020 as materials, the causal relationship between meteorological factors and chemical components in tobacco leaves was mined by combining the Graphical Lasso method with the Information Geometric Causal Inference (IGCI) causal inference method. In addition, a causal weight transformation mechanism was proposed based on the causal adjacency matrix obtained from the causal relationship to improve the predictability of the models. The results showed that there was a correlation between the meteorological factors and chemical components in tobacco leaves studied, and the correlation results were consistent with the results of agricultural experiments. A causal weight transformation mechanism was established, and the prediction accuracy of the deep learning models was improved for over 83% of the samples in predicting the chemical components in the leaves of cv. Yunyan 87 and cv. Zhongyan 100. This method provides support for mining factors influencing chemical components in tobacco leaves and predicting chemical component contents.

     

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