Avagyan, VaheAlonso Fernández, Andrés ModestoNogales Martin, Fco. Javier2021-06-252021-06-252018-06Avagyan, V., Alonso, A. M. & Nogales, F. J. (2018). D-trace estimation of a precision matrix using adaptive Lasso penalties. Advances in Data Analysis and Classification, 12(2), pp. 425–447.1862-5347https://hdl.handle.net/10016/32938The accurate estimation of a precision matrix plays a crucial role in the current age of high-dimensional data explosion. To deal with this problem, one of the prominent and commonly used techniques is the ℓ1 norm (Lasso) penalization for a given loss function. This approach guarantees the sparsity of the precision matrix estimate for properly selected penalty parameters. However, the ℓ1 norm penalization often fails to control the bias of obtained estimator because of its overestimation behavior. In this paper, we introduce two adaptive extensions of the recently proposed ℓ1 norm penalized D-trace loss minimization method. They aim at reducing the produced bias in the estimator. Extensive numerical results, using both simulated and real datasets, show the advantage of our proposed estimators.23eng© 2016, Springer-Verlag Berlin HeidelbergAdaptive thresholdingD-trace LossGaussian graphical modelGene expression dataHigh-dimensionalityD-trace estimation of a precision matrix using adaptive Lasso penaltiesresearch articleEstadísticahttps://doi.org/10.1007/s11634-016-0272-8open access4252447Advances in Data Analysis and Classification12AR/0000021872