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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 651700 of 796 papers

TitleStatusHype
Projected Wirtinger Gradient Descent for Low-Rank Hankel Matrix Completion in Spectral Compressed Sensing0
Categorical Matrix Completion0
Annotation Projection-based Representation Learning for Cross-lingual Dependency Parsing0
Notes on Low-rank Matrix Factorization0
Completing Low-Rank Matrices with Corrupted Samples from Few Coefficients in General Basis0
Taming the Wild: A Unified Analysis of Hogwild!-Style Algorithms0
On the properties of variational approximations of Gibbs posteriors0
Matrix Completion from Fewer Entries: Spectral Detectability and Rank Estimation0
Image Tag Completion and Refinement by Subspace Clustering and Matrix Completion0
Symmetric Tensor Completion from Multilinear Entries and Learning Product Mixtures over the Hypercube0
Matrix Completion for Resolving Label Ambiguity0
A New Retraction for Accelerating the Riemannian Three-Factor Low-Rank Matrix Completion Algorithm0
Smooth PARAFAC Decomposition for Tensor Completion0
Towards Faster Rates and Oracle Property for Low-Rank Matrix Estimation0
Optimal Low-Rank Tensor Recovery from Separable Measurements: Four Contractions Suffice0
Prediction and Quantification of Individual Athletic Performance0
Relative Error Bound Analysis for Nuclear Norm Regularized Matrix Completion0
Social Trust Prediction via Max-norm Constrained 1-bit Matrix Completion0
Regularization-free estimation in trace regression with symmetric positive semidefinite matrices0
Poisson Matrix Recovery and Completion0
Streaming, Memory Limited Matrix Completion with Noise0
Structured Matrix Completion with Applications to Genomic Data Integration0
Relaxed Leverage Sampling for Low-rank Matrix Completion0
Online Matrix Completion and Online Robust PCA0
Scalable Nuclear-norm Minimization by Subspace Pursuit Proximal Riemannian Gradient0
A Characterization of Deterministic Sampling Patterns for Low-Rank Matrix Completion0
Matrix Completion with Noisy Entries and Outliers0
Low Rank Matrix Completion with Exponential Family Noise0
1-Bit Matrix Completion under Exact Low-Rank Constraint0
Exact tensor completion using t-SVD0
Speeding up Permutation Testing in Neuroimaging0
Recovery of Piecewise Smooth Images from Few Fourier Samples0
Poisson Matrix Completion0
Noisy Tensor Completion via the Sum-of-Squares Hierarchy0
Bayesian Learning for Low-Rank matrix reconstruction0
Learning Parameters for Weighted Matrix Completion via Empirical Estimation0
ACCAMS: Additive Co-Clustering to Approximate Matrices Succinctly0
Functional correspondence by matrix completion0
Adjusting Leverage Scores by Row Weighting: A Practical Approach to Coherent Matrix Completion0
Quantized Matrix Completion for Personalized Learning0
Probabilistic low-rank matrix completion on finite alphabets0
Consistent Collective Matrix Completion under Joint Low Rank Structure0
Spectral k-Support Norm Regularization0
Deterministic Symmetric Positive Semidefinite Matrix Completion0
Online Optimization for Max-Norm Regularization0
Guaranteed Matrix Completion via Non-convex Factorization0
Signal Recovery on Graphs: Variation Minimization0
Characterization of the equivalence of robustification and regularization in linear and matrix regression0
PU Learning for Matrix Completion0
Maximum Entropy Kernels for System Identification0
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