In the teaching and researching of linear regression analysis, it is interesting and enlightening to explore how the dependent variable vector can be inner-transformed into regression coefficient estimator vector from a visible geometrical view. As an example, the roadmap of such inner transformation is presented based on a simple multiple linear regression model in this work. By applying the matrix algorithms like singular value decomposition (SVD) and Moore-Penrose generalized matrix inverse, the dependent variable vector lands into the right space of the independent variable matrix and is metamorphosed into regression coefficient estimator vector through the three-step of inner transformation. This work explores the geometrical relations...
The standard PLSR is presented from a geometric point of view consisting of two projections. In the ...
In this article, we examine F, Wald, LR, and LM test statistics in the linear regression model using...
The multivariate regression of a p - 1 vector Y of random variables on a q - 1 vector X of explanato...
Regression analysis is traditionally presented in algebraic equations and matrices. However, it can ...
5 pages, 1 article*Geometrical Interpretation of Step-Wise Estimation of Parameters in Linear Regres...
Multivariate selection can be represented as a linear transformation in a geometric framework. This ...
Dimensional Analysis (DA) is a mathematical method that manipulates the data to be analyzed in a hom...
In a multiple-regression analysis it is often necessary to assign a value, different from the least-...
Ordinary least square is the common way to estimate linear regression models. When inputs are correl...
AbstractThe multivariate regression of a p × 1 vector Y of random variables on a q × 1 vector X of e...
Concise, mathematically clear, and comprehensive treatment of the subject.* Expanded coverage of dia...
Using linear algebra this thesis developed linear regression analysis including analysis of variance...
This paper gives a comprehensive discussion on complex regression model by extending the idea of reg...
: The problem of n-dimensional orthogonal linear regression is a problem of finding an n-dimensional...
Abstract: In classical multiple linear regression analysis problems will occur if the regressors are...
The standard PLSR is presented from a geometric point of view consisting of two projections. In the ...
In this article, we examine F, Wald, LR, and LM test statistics in the linear regression model using...
The multivariate regression of a p - 1 vector Y of random variables on a q - 1 vector X of explanato...
Regression analysis is traditionally presented in algebraic equations and matrices. However, it can ...
5 pages, 1 article*Geometrical Interpretation of Step-Wise Estimation of Parameters in Linear Regres...
Multivariate selection can be represented as a linear transformation in a geometric framework. This ...
Dimensional Analysis (DA) is a mathematical method that manipulates the data to be analyzed in a hom...
In a multiple-regression analysis it is often necessary to assign a value, different from the least-...
Ordinary least square is the common way to estimate linear regression models. When inputs are correl...
AbstractThe multivariate regression of a p × 1 vector Y of random variables on a q × 1 vector X of e...
Concise, mathematically clear, and comprehensive treatment of the subject.* Expanded coverage of dia...
Using linear algebra this thesis developed linear regression analysis including analysis of variance...
This paper gives a comprehensive discussion on complex regression model by extending the idea of reg...
: The problem of n-dimensional orthogonal linear regression is a problem of finding an n-dimensional...
Abstract: In classical multiple linear regression analysis problems will occur if the regressors are...
The standard PLSR is presented from a geometric point of view consisting of two projections. In the ...
In this article, we examine F, Wald, LR, and LM test statistics in the linear regression model using...
The multivariate regression of a p - 1 vector Y of random variables on a q - 1 vector X of explanato...