The goal of DDL is to implement the Doubly Debiased Lasso estimator proposed in https://arxiv.org/abs/2004.03758. It Computes the Doubly Debiased Lasso estimator of a single regression coefficient in the high-dimensional linear model with hidden confounders and also constructs the confidence interval forthe target regression coefficient.
You can install the released version of DDL from CRAN with:
install.packages("DDL")
This is a basic example which shows you how to solve a common problem
Generate the data:
index = c(1,2,10)
n = 500
p = 300
s = 5
q = 3
sigmaE = 2
sigma = 2
pert = 1
H = pert*matrix(rnorm(n*q,mean=0,sd=1),n,q,byrow = TRUE)
Gamma = matrix(rnorm(q*p,mean=0,sd=1),q,p,byrow = TRUE)
#value of X independent from H
E = matrix(rnorm(n*p,mean=0,sd=sigmaE),n,p,byrow = TRUE)
#defined in eq. (2), high-dimensional measured covariates
X = E + H %*% Gamma
delta = matrix(rnorm(q*1,mean=0,sd=1),q,1,byrow = TRUE)
#px1 matrix, creates beta with 1s in the first s entries and the remaining p-s as 0s
beta = matrix(rep(c(1,0),times = c(s,p-s)),p,1,byrow = TRUE)
#nx1 matrix with values of mean 0 and SD of sigma, error in Y independent of X
nu = matrix(rnorm(n*1,mean=0,sd=sigma),n,1,byrow = TRUE)
#eq. (1), the response of the Structural Equation Model
Y = X %*% beta + H %*% delta + nu
Call 'DDL'
result = DDL(X,Y,index)
result
#> $index
#> [1] 1 2 10
#>
#> $est_init
#> [1] 0.7801164 0.8235082 0.0000000
#>
#> $est_ddl
#> [1] 0.92549403 1.00838136 -0.03282794
#>
#> $se
#> [1] 0.05655909 0.05814778 0.05246100
#>
#> attr(,"class")
#> [1] "DDL"
'summary' method for 'DDL'
summary(result)
#> Call:
#> Estimation and Inference for the index Coefficient
#>
#> Index est_ddl Std. Error z value Pr(>|z|)
#> 1 0.92549403 0.05655909 16.3633131 3.495805e-60
#> 2 1.00838136 0.05814778 17.3417002 2.278949e-67
#> 10 -0.03282794 0.05246100 -0.6257589 5.314731e-01
'ci' method for 'DDL' ```R
ci(result, alpha = 0.05)
ci(result, alpha = 0.05, alternative = "less")
ci(result, alpha = 0.05, alternative = "greater")
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