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No-Rank Tensor Decomposition Using Metric Learning

About

Tensor decomposition of high-dimensional data often struggles to capture semantically or physically meaningful structures, particularly when relying on reconstruction objectives and fixed-rank constraints. We introduce a no-rank tensor decomposition framework based on metric learning, which replaces reconstruction objectives with a similarity-driven optimization. By combining a triplet loss with diversity and uniformity regularization, the method learns embeddings where distances naturally reflect semantic and physical relationships, supported by theoretical guarantees on convergence and metric properties. We evaluate the approach on diverse datasets, including face recognition (LFW, Olivetti), brain connectivity (ABIDE), and simulated physical systems (galaxies, crystals). In comprehensive comparisons against classical methods (PCA, t-SNE, UMAP), tensor decompositions (CP, Tucker, t-SVD), and deep learning models (VAE, DEC, transformer based embeddings), our method produces embeddings that preserve physically and semantically relevant relationships and achieve competitive clustering performance. While transformers often excel in predictive accuracy on large datasets, our method provides interpretable embeddings and remains effective in small-data regimes where transformer training may be infeasible. This work establishes metric learning as a principled paradigm for tensor analysis, emphasizing physical interpretability and semantic relevance over pixel-level reconstruction, and offering an efficient and robust alternative in data-scarce scientific domains.

Maryam Bagherian• 2025

Related benchmarks

TaskDatasetResultRank
ClusteringOLIVETTI
Silhouette Score0.8566
15
ClusteringGalaxy Morphology
Silhouette Score0.9999
15
ClusteringCrystal Structure
Silhouette Score1
15
ClusteringLFW
Silhouette Score0.9752
15
ClusteringABIDE resting-state functional MRI (rs-fMRI)
Silhouette Score0.9932
15
Tensor ReconstructionLFW
Reconstruction Error0.0991
6
Tensor ReconstructionOLIVETTI
Reconstruction Error0.1001
6
Tensor ReconstructionABIDE
Reconstruction Error0.0139
6
Tensor ReconstructionGalaxy Morph.
Reconstruction Error0.0685
6
Tensor ReconstructionCrystal Struc.
Reconstruction Error0.0782
6
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