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A consistent and flexible framework for deep matrix factorizations

About

Deep matrix factorizations (deep MFs) are recent unsupervised data mining techniques inspired by constrained low-rank approximations. They aim to extract complex hierarchies of features within high-dimensional datasets. Most of the loss functions proposed in the literature to evaluate the quality of deep MF models and the underlying optimization frameworks are not consistent because different losses are used at different layers. In this paper, we introduce two meaningful loss functions for deep MF and present a generic framework to solve the corresponding optimization problems. We illustrate the effectiveness of this approach through the integration of various constraints and regularizations, such as sparsity, nonnegativity and minimum-volume. The models are successfully applied on both synthetic and real data, namely for hyperspectral unmixing and extraction of facial features.

Pierre De Handschutter, Nicolas Gillis• 2022

Related benchmarks

TaskDatasetResultRank
Hyperspectral UnmixingJasper Ridge
SAD (Water)10.6
38
Hyperspectral UnmixingSamson
Soil IoU86.5
12
Hyperspectral UnmixingSamson
SAD (Soil)1.52
12
Hyperspectral UnmixingSMS
Spectral Angle (Moss)5.13
12
Hyperspectral UnmixingCMS
Spectral Angle (Moss)4.4
12
Hyperspectral UnmixingWDC
Spectral Angle (Grass)20.89
12
Hyperspectral UnmixingSamson
Missed Endmembers Count0.00e+0
12
Hyperspectral UnmixingUrban 6 endmembers
Missed Endmembers4
12
Hyperspectral UnmixingSimple Miniature (SM)
Missed Endmembers1
12
Hyperspectral UnmixingUrban 6 endmembers
Spectral Angle (Road)23.65
12
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