In prediction, the percentage error is often felt to be more meaningful than the absolute error. We therefore extend the method of least squares to deal with percentage errors, for both simple and multiple regression. Exact expressions are derived for the coefficients, and we show how such models can be estimated using standard software. When the relative error is normally distributed, least squares percentage regression is shown to provide maximum likelihood estimates. The multiplicative error model is linked to least squares percentage regression in the same way that the standard additive error model is linked to ordinary least squares regression.Peer reviewe
This paper considers the linear regression model with multiple stochastic regressors, intercept, and...
Thesis (Ph.D.)--University of Washington, 2018We revisit and make progress on some old but challengi...
AbstractIn a detailed study of the accuracy of the Cholesky method for solving least squares equatio...
In prediction, the percentage error is often felt to be more meaningful than the absolute error. We ...
Much of the data analysed by least squares regression methods violates the assumption that independe...
A Monte Carlo simulation is used to compare estimation and inference procedures in least absolute va...
In the present thesis we deal with the linear regression models based on least squares. These method...
Classical least squares regression consists of minimizing the sum of the squared residuals. Many aut...
This paper looks at solving the least squares problem and then using that theory to solve a simple m...
When testing for the equality of regression slopes based on ordinary least squares (OLS) estimation,...
Contents 1 The Linear Least Squares Problem 3 1.1.1 Under and overspeci ed models . . . . . . . . ....
Least squares estimation, when used appropriately, is a powerful research tool. A deeper understandi...
Abstract:In classical regression analysis, the error of independent variable is usually not taken in...
Estimation of a regression function from independent and identical distributed data is considered. T...
The parameters of the multiple linear regression are estimated using least squares ( B̂LS ) and unbi...
This paper considers the linear regression model with multiple stochastic regressors, intercept, and...
Thesis (Ph.D.)--University of Washington, 2018We revisit and make progress on some old but challengi...
AbstractIn a detailed study of the accuracy of the Cholesky method for solving least squares equatio...
In prediction, the percentage error is often felt to be more meaningful than the absolute error. We ...
Much of the data analysed by least squares regression methods violates the assumption that independe...
A Monte Carlo simulation is used to compare estimation and inference procedures in least absolute va...
In the present thesis we deal with the linear regression models based on least squares. These method...
Classical least squares regression consists of minimizing the sum of the squared residuals. Many aut...
This paper looks at solving the least squares problem and then using that theory to solve a simple m...
When testing for the equality of regression slopes based on ordinary least squares (OLS) estimation,...
Contents 1 The Linear Least Squares Problem 3 1.1.1 Under and overspeci ed models . . . . . . . . ....
Least squares estimation, when used appropriately, is a powerful research tool. A deeper understandi...
Abstract:In classical regression analysis, the error of independent variable is usually not taken in...
Estimation of a regression function from independent and identical distributed data is considered. T...
The parameters of the multiple linear regression are estimated using least squares ( B̂LS ) and unbi...
This paper considers the linear regression model with multiple stochastic regressors, intercept, and...
Thesis (Ph.D.)--University of Washington, 2018We revisit and make progress on some old but challengi...
AbstractIn a detailed study of the accuracy of the Cholesky method for solving least squares equatio...