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Using the Machine Learning Method to Study the Environmental Footprints Embodied in Chinese Diet

机译:利用机器学习方法研究中国饮食中体现的环境足迹

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摘要

The food system profoundly affects the sustainable development of the environment and resources. Numerous studies have shown that the food consumption patterns of Chinese residents will bring certain pressure to the environment. Food consumption patterns have individual differences. Therefore, reducing the pressure of food consumption patterns on the environment requires the precise positioning of people with high consumption tendencies. Based on the related concepts of the machine learning method, this paper designs an identification method of the population with a high environmental footprint by using a decision tree as the core and realizes the automatic identification of a large number of users. By using the microdata provided by CHNS(the China Health and Nutrition Survey), we study the relationship between residents’ dietary intake and environmental resource consumption. First, we find that the impact of residents’ food system on the environment shows a certain logistic normal distribution trend. Then, through the decision tree algorithm, we find that four demographic characteristics of gender, income level, education level, and region have the greatest impact on residents’ environmental footprint, where the consumption trends of different characteristics are also significantly different. At the same time, we also use the decision tree to identify the population characteristics with high consumption tendency. This method can effectively improve the identification coverage and accuracy rate and promotes the improvement of residents’ food consumption patterns.
机译:食品制度深刻影响环境和资源的可持续发展。许多研究表明,中国居民的食品消费模式将为环境带来一定的压力。食品消费模式具有个别差异。因此,降低了对环境的食物消费模式的压力需要具有高消费趋势的人的精确定位。基于机器学习方法的相关概念,本文通过使用决策树作为核心,设计具有高环境足迹的识别方法,并实现了大量用户的自动识别。通过使用CHN(中国健康和营养调查)提供的Microdata,我们研究居民膳食摄入和环境资源消费之间的关系。首先,我们发现居民的食物系统对环境的影响表明了一定的逻辑正态分布趋势。然后,通过决策树算法,我们发现四个性别,收入水平,教育水平和地区的人口统计特征对居民的环境足迹最大的影响,不同特征的消费趋势也有显着差异。与此同时,我们还使用决策树来识别具有高消耗趋势的人口特征。该方法可以有效地提高识别覆盖率和准确率,促进居民食品消费模式的改善。

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