The SIDA package implements the SIDA and SIDANet algorithms for joint association and classification studies. The algorithms consider the overall association between multi-view data, and the separation within each view when choosing discriminant vectors that are associated and optimally separate subjects. SIDANet incorporates prior structural information in joint association and classification studies. It uses the normalized Laplacian of a graph to smooth coefficients of predictor variables, thus encouraging selection of predictors that are connected and behave similarly.
Package details |
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Author | Sandra E. Safo, Eun Jeong Min, and Lillian Haine |
Maintainer | Sandra E. Safo <ssafo@umn.edu> |
License | GPL (>=2.0) |
Version | 1.0 |
URL | https://www.sandraesafo.com/software |
Package repository | View on GitHub |
Installation |
Install the latest version of this package by entering the following in R:
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