Fusion Learning

The fusion learning method uses a model selection algorithm to learn from multiple data sets across different experimental platforms through group penalization. The responses of interest may include a mix of discrete and continuous variables. The responses may share the same set of predictors, however, the models and parameters differ across different platforms. Integrating information from different data sets can enhance the power of model selection. Package is based on Xin Gao, Raymond J. Carroll (2017) .


Reference manual

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0.1.1 by Yuan Zhong, a year ago

Browse source code at https://github.com/cran/FusionLearn

Authors: Xin Gao , Yuan Zhong , and Raymond J. Carroll

Documentation:   PDF Manual  

GPL (>= 2) license

Suggests knitr, rmarkdown, MASS, ggplot2, mvtnorm

See at CRAN