Abstract Background Regularized generalized linear models (GLMs) are popular regression methods in bioinformatics, particularly useful in scenarios with fewer observations than parameters/features or when many of the features are correlated. In both ridge and lasso regularization, feature shrinkage is controlled by a penalty parameter λ. The elastic net introduces a mixing parameter α to tune the shrinkage continuously from ridge to lasso. Selecting α objectively and determining which features contributed significantly to prediction after model fitting remain a practical challenge given the paucity of available software to evaluate performance and statistical significance. Results eNetXplorer builds on top of glmnet to address the above iss...
Modelling biological associations or dependencies using linear regression is often complicated when ...
The tramnet package implements regularized linear transformation models by combining the flexible cl...
High-dimensional data applications often entail the use of various statistical and machine-learning ...
We have developed the R package c060 with the aim of improving R software func- tionality for high-d...
Network-based regularization has achieved success in variable selection for high-dimensional biologi...
eNetXplorer vignette. Detailed description of eNetXplorerâs workflow applied to synthetic datasets...
Introduction: Computational biology, diagnostic modalities, clinical patient results often involve w...
Summary: Modelling biological associations or dependencies using linear regression is often complica...
peer reviewedMotivation: Machine learning in the biomedical sciences should ideally provide predicti...
In generalized linear regression problems with an abundant number of features, lasso-type regulariza...
We propose covariance-regularized regression, a family of methods for prediction in high dimensional...
Dirmeier S, Fuchs C, Mueller NS, Theis FJ. netReg: network-regularized linear models for biological ...
From the combination of Mendelian Genetics and Biometrics in the early 1900s to the completion of th...
<p>Gaussian graphical models represent the underlying graph structure of conditional dependence betw...
Identifying biomarker and signaling pathway is a critical step in genomic studies, in which the regu...
Modelling biological associations or dependencies using linear regression is often complicated when ...
The tramnet package implements regularized linear transformation models by combining the flexible cl...
High-dimensional data applications often entail the use of various statistical and machine-learning ...
We have developed the R package c060 with the aim of improving R software func- tionality for high-d...
Network-based regularization has achieved success in variable selection for high-dimensional biologi...
eNetXplorer vignette. Detailed description of eNetXplorerâs workflow applied to synthetic datasets...
Introduction: Computational biology, diagnostic modalities, clinical patient results often involve w...
Summary: Modelling biological associations or dependencies using linear regression is often complica...
peer reviewedMotivation: Machine learning in the biomedical sciences should ideally provide predicti...
In generalized linear regression problems with an abundant number of features, lasso-type regulariza...
We propose covariance-regularized regression, a family of methods for prediction in high dimensional...
Dirmeier S, Fuchs C, Mueller NS, Theis FJ. netReg: network-regularized linear models for biological ...
From the combination of Mendelian Genetics and Biometrics in the early 1900s to the completion of th...
<p>Gaussian graphical models represent the underlying graph structure of conditional dependence betw...
Identifying biomarker and signaling pathway is a critical step in genomic studies, in which the regu...
Modelling biological associations or dependencies using linear regression is often complicated when ...
The tramnet package implements regularized linear transformation models by combining the flexible cl...
High-dimensional data applications often entail the use of various statistical and machine-learning ...