y
,
y
n models have the difficulty of explaining why and how a
n is made.
he principle of a regression analysis — regressing to mean. The dots are the
ata (the collected data points). The triangles are the regressed means. The
tween the observed data and their regressed means are the regression errors.
ne represents the regressed regression function, which is to be estimated through
ation process based on the regressed means, i.e., the five triangles.
ression model can be either univariate or multivariate depending
mber of the repressors or the independent variables employed in
on model. In a univariate regression model, only the relationship
two variables is examined. One variable is an independent
(x) and the other is a dependent variable (y). The relationship
at y can be explained or interpreted by x in a linear way. Its formal
is shown below, where ߙ is the intercept, ߚ is the regression
nt and ߝ is the regression error
ݕ ൌߙߚݔߝ
above equation, ߝ interprets how good the regression model is
erprets how y depends on x. For instance, when one unit change
ened in x, ߚ units change will happen in y accordingly. Figure 4.3
uch a model. The relationship between two variables in this
e regression model is defined as below,