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Subspace Clustering on Incomplete Data with Self-Supervised Contrastive Learning

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Subspace clustering aims to group data points that lie in a union of low-dimensional subspaces and finds wide application in computer vision, hyperspectral imaging, and recommendation systems. However, most existing methods assume fully observed data, limiting their effectiveness in real-world scenarios with missing entries. In this paper, we propose a contrastive self-supervised framework, Contrastive Subspace Clustering (CSC), designed for clustering incomplete data. CSC generates masked views of partially observed inputs and trains a deep neural network using a SimCLR-style contrastive loss to learn invariant embeddings. These embeddings are then clustered using sparse subspace clustering. Experiments on six benchmark datasets show that CSC consistently outperforms both classical and deep learning baselines, demonstrating strong robustness to missing data and scalability to large datasets.

Huanran Li, Daniel Pimentel-Alarc\'on• 2026

Related benchmarks

TaskDatasetResultRank
Subspace ClusteringHSI-Pavia 10 classes
Clustering Accuracy78.12
78
ClusteringMNIST
Clustering Accuracy72.16
60
Subspace ClusteringHSI-IndianPines 17 classes (train test)
Clustering Acc (SR 0.1)43.08
13
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