About Anaconda Help Download Anaconda

aksarkar / packages / r-softimpute 1.4

Iterative methods for matrix completion that use nuclear-norm regularization. There are two main approaches.The one approach uses iterative soft-thresholded svds to impute the missing values. The second approach uses alternating least squares. Both have an "EM" flavor, in that at each iteration the matrix is completed with the current estimate. For large matrices there is a special sparse-matrix class named "Incomplete" that efficiently handles all computations. The package includes procedures for centering and scaling rows, columns or both, and for computing low-rank SVDs on large sparse centered matrices (i.e. principal components)

Installers

  • linux-64 v1.4

conda install

To install this package run one of the following:
conda install aksarkar::r-softimpute

Description


© 2024 Anaconda, Inc. All Rights Reserved. (v4.0.5) Legal | Privacy Policy