Research Article

Efficient Regularized Regression with Penalty for Variable Selection and Network Construction

Table 2

Performance measures for and regularized regression with over 100 simulations, where values in the parenthesis are the standard deviations. SF: number of average selected features; MSE: average mean squared error; : average absolute bias when comparing true and estimated parameters.

SFMSE#SFMSE

03.09 (±0.53)1.04 (±0.15)0.18 (±0.11)13.3 (±4.56)1.21 (±0.17)0.39 (±0.1)
0.33.08 (±0.54)1.04 (±0.15)0.17 (±0.07)14.5 (±4.20)1.22 (±0.17)0.42 (±0.19)
0.63.10 (±0.46)1.07 (±0.17)0.21 (±0.10)13.8 (±5.4)1.27 (±0.47)0.57 (±0.25)
0.83.02 (±0.14)1.04 (±0.14)0.26 (±0.13)13.4 (±4.91)1.25 (±0.21)0.74 (±0.25)