hows a further comparison through a numeric simulation. It can
hat when ݓଵ increases, the decrease of ݓଶ in a Lasso model is in
curve while the decrease of ݓଶ in a ridge model is in a quadratic
ecause of this, the decay of the regression coefficients of the less
t variables in a Lasso model will be faster.
(a) (b)
A comparison of regression coefficient shrinkage between RLR and Lasso. (a)
atic comparison. (b) The numerical simulation comparison.
s small, more regression coefficients are shrunk to zero. This
at unimportant variables are penalised while important variables
nced in a model. A Lasso model is generally not analytically
and the quadratic programming approach [Garey and Johnson,
used to estimate the parameters for a Lasso model. In
matics, Lasso has been used to derive the parsimonious models or
se models. For instance, it has been used for building the
ious Cox proportional hazards models [Sohn, et al., 2009], for
ing more parsimonious gene networks through exploring the
lationships between genes [Gustafsson, et al., 2009; Shimamura,
07], and for detecting the causative genes of diseases [Shi, et al.,
R package glmnet can be used for the Lasso regression, where
ha parameter is set one. The following code is used to construct a
odel for a data set, where x is an input matrix and y is an output