About Anaconda Help Download Anaconda

Efficient solvers for 10 regularized multi-task learning algorithms applicable for regression, classification, joint feature selection, task clustering, low-rank learning, sparse learning and network incorporation. Based on the accelerated gradient descent method, the algorithms feature a state-of-art computational complexity O(1/k^2). Sparse model structure is induced by the solving the proximal operator. The detail of the package is described in the paper of Han Cao and Emanuel Schwarz (2018) <doi:10.1093/bioinformatics/bty831>.

Type Size Name Uploaded Downloads Labels
conda 393.1 kB | noarch/r-rmtl-0.9.9-r43h142f84f_0.tar.bz2  1 year and 3 months ago 23 main
conda 393.0 kB | noarch/r-rmtl-0.9.9-r42h142f84f_0.tar.bz2  2 years and 9 months ago 51 main
conda 291.6 kB | noarch/r-rmtl-0.9-r36h6115d3f_0.tar.bz2  5 years and 1 month ago 123 main

© 2025 Anaconda, Inc. All Rights Reserved. (v4.1.0) Legal | Privacy Policy