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Online Nonnegative Matrix Factorization with Outliers

About

We propose a unified and systematic framework for performing online nonnegative matrix factorization in the presence of outliers. Our framework is particularly suited to large-scale data. We propose two solvers based on projected gradient descent and the alternating direction method of multipliers. We prove that the sequence of objective values converges almost surely by appealing to the quasi-martingale convergence theorem. We also show the sequence of learned dictionaries converges to the set of stationary points of the expected loss function almost surely. In addition, we extend our basic problem formulation to various settings with different constraints and regularizers. We also adapt the solvers and analyses to each setting. We perform extensive experiments on both synthetic and real datasets. These experiments demonstrate the computational efficiency and efficacy of our algorithms on tasks such as (parts-based) basis learning, image denoising, shadow removal and foreground-background separation.

Renbo Zhao, Vincent Y. F. Tan• 2016

Related benchmarks

TaskDatasetResultRank
Topic Modeling20NG
NPMI0.118
23
Topic ModelingBBC
NPMI0.065
17
Topic ModelingSS
NPMI0.019
13
Topic ModelingDBLP
NPMI0.016
13
Topic ModelingM10
NPMI0.05
13
Topic ModelingBio
NPMI0.1
13
Topic ModelingDBLP
IRBO89.2
13
Document ClusteringPascal (test)
NMI0.326
13
Document ClusteringM10 (test)
NMI0.24
13
Document ClusteringBio (test)
NMI0.338
13
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