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An Approach for PLS Regression Modeling of Functional Data

机译:功能数据的PLS回归建模方法

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摘要

Partial Least Squares (PLS) approach is employed for linear regression modeling when both the dependent variables and independent variables are functional data (curves). After the introduction of the constant-style mean, variance and the correlative coefficient of functional data, an approach for PLs regression modeling of functional data is proposed to overcome the multicollinearity existing in the independent variables set An empirical study of the functional regression modeling shows that the proposed approach provides a tool for building regression model on functional data under the condition of multicollinearity. The empirical study conclusion, which is coincident with the wildly accepted economic theory, indicates that the Compensation of Employees is the most important variable that contributes to the Total Retail Sales of Consumer Goods in China, while the Government Revenue and Income of Enterprises are less important.
机译:当因变量和自变量都是函数数据(曲线)时,使用偏最小二乘(PLS)方法进行线性回归建模。在引入了函数数据的常量式均值,方差和相关系数之后,提出了一种用于函数数据的PL回归建模的方法,以克服自变量集中存在的多重共线性。对函数回归建模的实证研究表明:所提出的方法提供了在多重共线性条件下基于功能数据建立回归模型的工具。实证研究的结论与被广泛接受的经济学理论相吻合,表明雇员的报酬是影响中国消费品零售总额的最重要变量,而政府的收入和企业的收入则不那么重要。 。

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