RSSL: Semi-supervised Learning in R

12/23/2016
by   Jesse H. Krijthe, et al.
0

In this paper, we introduce a package for semi-supervised learning research in the R programming language called RSSL. We cover the purpose of the package, the methods it includes and comment on their use and implementation. We then show, using several code examples, how the package can be used to replicate well-known results from the semi-supervised learning literature.

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