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Analysis of influencing factors of grain yield based on multiple linear regression

机译:基于多线性回归的谷物产量影响因素分析

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摘要

Food security is a strategic issue affecting economic development and social stability and agriculture has always been at the forefront of national economic development. As a large agricultural country and a country with a large population, the production of grain is of great importance to China. Therefore, in order to ensure national food security and assist the food administrative department in making scientific and effective decisions, it is significant to study the law of variance in grain production and make accurate forecasting of its development trend. This paper constructs the stepwise regression model and principal component regression to analyse the influencing factors of grain yield respectively and compares these two models in terms of their accuracy in prediction. After conducting the two regressions, this paper concludes that the two models both explain the variance in grain yield ideally, but from the aspect of accuracy in prediction, the principal component regression is more effective than stepwise linear regression.
机译:粮食安全是一种影响经济发展的战略问题,社会稳定,农业一直处于国家经济发展的最前沿。作为一个大型农业国家和一个拥有较大人口的国家,粮食的产量对中国具有重要意义。因此,为了确保国家粮食安全并协助食品行政部门进行科学和有效的决定,研究粮食生产的差异规律是重要的,使其发展趋势的准确预测。本文构建了逐步回归模型和主要成分回归,分别分析了谷物产量的影响因素,并在预测中的准确性方面比较了这两个模型。在进行两次回归后,本文得出结论,两种模型既理想地解释谷物产量的方差,而是从预测的准确性方面,主要成分回归比逐步线性回归更有效。

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