Title of article :
Graphical solutions for structural regression assist errors-in-variables modelling
Author/Authors :
Richard Woodhouse، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
Structural regression attempts to reveal an underlying relationship by compensating
for errors in the variables. Ordinary least-squares regression has an entirely different purpose
and provides a relationship between error-included variables. Structural model solutions, also
known as the errors-in-variables and measurement–error solutions, use various inputs such as
the error–variance ratio and x-error variance. This paper proposes that more accurate structural
line gradient (coefficient) solutions will result from using the several solutions together as a
system of equations. The known data scatter, as measured by the correlation coefficient, should
always be used in choosing legitimate combinations of x- and y-error terms. However, this is
difficult using equations. Chart solutions are presented to assist users to understand the structural
regression process, to observe the correlation coefficient constraint, to assess the impact of their
error estimates and, therefore, to provide better quality estimates of the structural regression
gradient.
Keywords :
Correlation coefficient constraint , error compensation , error–variance ratio , linefitting , measurement–error model
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS