Symmetric Least Squares Estimates of Functional Relationships

Q3 Social Sciences
Michael T. Kane
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引用次数: 1

Abstract

Ordinary least squares (OLS) regression provides optimal linear predictions of a dependent variable, y, given an independent variable, x, but OLS regressions are not symmetric or reversible. In order to get optimal linear predictions of x given y, a separate OLS regression in that direction would be needed. This report provides a least squares derivation of the geometric mean (GM) regression line, which is symmetric and reversible, as the line that minimizes a weighted sum of the mean squared errors for y, given x, and for x, given y. It is shown that the GM regression line is symmetric and predicts equally well (or poorly, depending on the absolute value of rxy) in both directions. The errors of prediction for the GM line are, naturally, larger for the predictions of both x and y than those for the two OLS equations, each of which is specifically optimized for prediction in one direction, but for high values of , the difference is not large. The GM line has previously been derived as a special case of principal-components analysis and gets its name from the fact that its slope is equal to the geometric mean of the slopes of the OLS regressions of y on x and x on y.

Abstract Image

函数关系的对称最小二乘估计
给定自变量x,普通最小二乘(OLS)回归提供了因变量y的最佳线性预测,但OLS回归不是对称的或可逆的。为了在给定y的情况下获得x的最佳线性预测,需要在该方向上进行单独的OLS回归。本报告提供了几何平均(GM)回归线的最小二乘推导,这是对称的和可逆的,因为这条线可以最小化给定x的y和给定y的x的均方误差的加权和。结果表明,GM回归线是对称的,并且在两个方向上预测同样好(或差,取决于rxy的绝对值)。对于x和y的预测,GM线的预测误差自然比两个OLS方程的预测误差大,其中每个方程都是专门针对一个方向进行优化的预测,但对于高值,差异并不大。GM线以前是作为主成分分析的一种特殊情况推导出来的,它的斜率等于y对x和x对y的OLS回归斜率的几何平均值,因此得名。
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来源期刊
ETS Research Report Series
ETS Research Report Series Social Sciences-Education
CiteScore
1.20
自引率
0.00%
发文量
17
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