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CoreFlow: Low-Rank Matrix Generative Models

About

Learning matrix-valued distributions from high-dimensional and possibly incomplete training data is challenging: ambient-space generative modeling is computationally expensive and statistically fragile when the matrix dimension is large but the sample size is limited. We propose CoreFlow, a geometry-preserving low-rank flow model that learns shared row/column subspaces across the matrix distribution, and then trains a continuous normalizing flow only on the induced low-dimensional core. CoreFlow is designed for settings where shared low-rank matrix geometry is present, especially in high-dimensional limited-sample regimes. This separates shared matrix geometry from sample-specific variation, preserves matrix structure, and substantially improves training efficiency. The same framework also handles incomplete training matrices through masked Riemannian updates and iterative completion. Across real and synthetic benchmarks, CoreFlow substantially improves spectral and moment-level generation quality in few-sample regimes while remaining competitive in data-rich settings, even under compression to 9% of the ambient dimension and with up to 40% missing training entries.

Dongze Wu, Linglingzhi Zhu, Yao Xie• 2026

Related benchmarks

TaskDatasetResultRank
Density EstimationSolar 0% p_miss Few-sample (n=300)
MMD0.177
14
Matrix GenerationSolar few-sample (n=300) pmiss=0%
Singular Value Discrepancy0.0087
14
Density EstimationSolar Few-sample (n=300) (20% p_miss)
MMD0.193
11
Matrix GenerationSolar few-sample (n=300) (pmiss=20%)
Average Singular-Value Discrepancy0.0064
11
Generative ModelingWaves 20% missing-entry rate
Mean Absolute Entry Difference0.47
10
Generative ModelingCrosshatch 20% missing-entry rate
Mean Entry Difference (x10^-2)0.0107
10
Density EstimationSolar Few-sample (n=300) (40% p_miss)
MMD0.249
8
Generative Modeling with Missing DataSolar n=300, 40% p_miss
MMD0.249
6
Matrix GenerationSolar pmiss=40% n = 300
Average Singular-Value Discrepancy1.99
6
Distribution MatchingBlobs pmiss 0%
Frobenius Norm Difference (Mean)0.09
5
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