ipflasso - Integrative Lasso with Penalty Factors
The core of the package is cvr2.ipflasso(), an extension
of glmnet to be used when the (large) set of available
predictors is partitioned into several modalities which
potentially differ with respect to their information content in
terms of prediction. For example, in biomedical applications
patient outcome such as survival time or response to therapy
may have to be predicted based on, say, mRNA data, miRNA data,
methylation data, CNV data, clinical data, etc. The clinical
predictors are on average often much more important for outcome
prediction than the mRNA data. The ipflasso method takes this
problem into account by using different penalty parameters for
predictors from different modalities. The ratio between the
different penalty parameters can be chosen from a set of
optional candidates by cross-validation or alternatively
generated from the input data.