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Semi-Supervised Contrastive Learning with Orthonormal Prototypes

About

Contrastive learning has emerged as a powerful method in deep learning, excelling at learning effective representations through contrasting samples from different distributions. However, dimensional collapse, where embeddings converge into a lower-dimensional space, poses a significant challenge, especially in semi-supervised and self-supervised setups. In this paper, we first identify a critical learning-rate threshold, beyond which standard contrastive losses converge to collapsed solutions. Building on these insights, we propose CLOP, a novel semi-supervised loss function designed to prevent dimensional collapse by promoting the formation of orthogonal linear subspaces among class embeddings. Through extensive experiments on real and synthetic datasets, we demonstrate that CLOP improves performance in image classification and object detection tasks while also exhibiting greater stability across different learning rates and batch sizes.

Huanran Li, Manh Nguyen, Daniel Pimentel-Alarc\'on (3) __INSTITUTION_3__ Department of Electrical Engineering, (2) Statistics, (3) Biostatistics, Wisconsin Institute of Discovery, University of Wisconsin-Madison)• 2025

Related benchmarks

TaskDatasetResultRank
Image ClassificationSUN397--
425
Image ClassificationDTD
Accuracy73.85
419
Image ClassificationCIFAR-100--
302
Image ClassificationCaltech-101--
146
Image ClassificationImageNet (10% labels)
Top-1 Acc79.1
98
Image ClassificationFood--
92
Object DetectionVOC 2007
mAP86.46
23
Image ClassificationFlowers
Accuracy (BA)97.18
15
Object DetectionBirdsnap
Top-1 Acc0.7794
8
Object DetectionAircraft
Mean PC Accuracy88.1
8
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