SOTAVerified

Matrix Completion

Matrix Completion is a method for recovering lost information. It originates from machine learning and usually deals with highly sparse matrices. Missing or unknown data is estimated using the low-rank matrix of the known data.

Source: A Fast Matrix-Completion-Based Approach for Recommendation Systems

Papers

Showing 321330 of 796 papers

TitleStatusHype
DeepVir -- Graphical Deep Matrix Factorization for "In Silico" Antiviral Repositioning: Application to COVID-19Code0
Recent Developments on Factor Models and its Applications in Econometric Learning0
Meta-learning based Alternating Minimization Algorithm for Non-convex OptimizationCode0
Efficient Model-Based Collaborative Filtering with Fast Adaptive PCACode0
Clustering of Nonnegative Data and an Application to Matrix Completion0
Low-rank matrix recovery with non-quadratic loss: projected gradient method and regularity projection oracle0
Column _2,0-norm regularized factorization model of low-rank matrix recovery and its computation0
Robust Low-rank Matrix Completion via an Alternating Manifold Proximal Gradient Continuation Method0
A Scalable, Adaptive and Sound Nonconvex Regularizer for Low-rank Matrix Completion0
Conservative Stochastic Optimization with Expectation Constraints0
Show:102550
← PrevPage 33 of 80Next →

No leaderboard results yet.