An appeal for symmetry is made to build established notions of specific representation and specific nonlinearity of measurement (often called model error) into a canonical linear regression model. Additive components are derived from the trivially complete model M = m. Factor analysis and equation error motivate corresponding notions of representation and nonlinearity in an errors-in-variables framework, with a novel interpretation of terms. It is suggested that a modern interpretation of correlation involves both linear and nonlinear association.
翻译:主张对称性,是为了将具体代表性和具体的非线性计量概念(通常称为模型错误)的既定概念纳入一个明性线性回归模型,从微小完整的模型M = m. 系数分析和等式错误中得出添加部分,促使在错误不变框架中形成相应的代表性和非线性概念,并对术语作出新的解释,建议对相关性的现代解释既涉及线性联系,也涉及非线性联系。