g
,
, two data sets had different slops. Therefore, the variances of
nt variable were different. They were 29.595 in Figure 4.8(a) and
in Figure 4.8(b). Because of this difference, two linear
n models had different Rଶ and F-statistic values. For instance, ܴଶ
1 in Figure 4.8(a) and was 0.7739 in Figure 4.8(b). The F-statistic
in Figure 4.8(a) and 1071.5 in Figure 4.8(b). Although two
n models had the same total regression error, their dependent
had different variances. Therefore, a regression model with a
ariance of the dependent variable had lower fitness measurement
d with a regression model with a greater variance of the dependent
although two regression models had the same total regression
(a) (b)
wo regression models for two data sets with a similar total regression error, but
ariances on dependent variable show very different Rଶ and F-statistic values.
e significance analysis of regression coefficients
question is the significance analysis of the regression coefficients
nship with the importance of the independent variables in a
n model. It examines whether an independent variable is
ntly correlated with the dependent variable. If an independent
has a significant correlation with the dependent variable, the
ent variable is believed to have a significant contribution to the
nt variable. To examine whether an independent variable has a