,
p
,
|ݓ|
ோ
ୀ
ݏ
d on this constraint, the objective function of Lasso is shown
here ߣ0 is a constraint constant and d stands for the number of
ent variables,
ܱൌ|܆௧ܟെܡ|ଶߣ|ݓ|
ௗ
ୀ
L1 constraint effect is more stringent. For instance, suppose there
variables, thus there are two regression coefficients, i.e., ݓଵ and
use |ݓଵ| |ݓଶ| ݏ, if |ݓଵ| increases, |ݓଶ| decreases. Suppose
and ݓଶ are positive. If ݓଵ is increased by ߜ, ݓଶ will be decreased
ݓଶൌݏെݓଵ. The relationship between the old value of ݓଶ and
value of ݓଶ is shown below,
ݓଶ
௪ݏെሺݓଵߜሻ൏ݏെݓଵൌݓଶ
ௗ
(4.43)
use of the use of L1 constraint, when ݓଵ increases, the decreasing
ݓଶ in a Lasso model is faster than that in a RLR model. This can
sed using Figure 4.20(a). Suppose ݓଶ is fixed and suppose two
he models have the same constraint constant C. The values of ݓଵ
RLR model and the Lasso model will have different strength,
e shown below,
ݓଵ
ோௗൌඥݏെݓଶൌ√ܥ
ݓଵ
௦௦ൌݏെݓଶൌܥ
(4.44)
hus no doubt that the following inequality is valid,
ݓଵ
ோௗൌ√ܥ൏ܥൌݓଵ
௦௦
(4.45)