Self Supervised Learning
Self-supervised learning (SSL) aims to train machine learning models using unlabeled data by formulating pretext tasks that encourage the model to learn useful representations. Current research focuses on improving SSL's performance and generalization across diverse data types (images, audio, graphs, point clouds) and downstream tasks, employing techniques like contrastive learning, masked autoencoders, and generative models within various architectures such as transformers and convolutional neural networks. These advancements are significant because they reduce the reliance on expensive and time-consuming data labeling, enabling the development of robust models for applications ranging from medical image analysis and speech recognition to geospatial AI and protein function prediction. The efficiency gains from SSL are also a key focus, with research exploring optimal model and data sizes for given computational budgets.
Papers
Whitening Consistently Improves Self-Supervised Learning
András Kalapos, Bálint Gyires-Tóth
Protected Test-Time Adaptation via Online Entropy Matching: A Betting Approach
Yarin Bar, Shalev Shaer, Yaniv Romano
LiPCoT: Linear Predictive Coding based Tokenizer for Self-supervised Learning of Time Series Data via Language Models
Md Fahim Anjum
Efficient Test-Time Prompt Tuning for Vision-Language Models
Yuhan Zhu, Guozhen Zhang, Chen Xu, Haocheng Shen, Xiaoxin Chen, Gangshan Wu, Limin Wang
SMILES-Mamba: Chemical Mamba Foundation Models for Drug ADMET Prediction
Bohao Xu, Yingzhou Lu, Chenhao Li, Ling Yue, Xiao Wang, Nan Hao, Tianfan Fu, Jim Chen
Self-supervised pre-training with diffusion model for few-shot landmark detection in x-ray images
Roberto Di Via, Francesca Odone, Vito Paolo Pastore
Exploring the Effect of Dataset Diversity in Self-Supervised Learning for Surgical Computer Vision
Tim J. M. Jaspers, Ronald L. P. D. de Jong, Yasmina Al Khalil, Tijn Zeelenberg, Carolus H. J. Kusters, Yiping Li, Romy C. van Jaarsveld, Franciscus H. A. Bakker, Jelle P. Ruurda, Willem M. Brinkman, Peter H. N. De With, Fons van der Sommen
Unsqueeze [CLS] Bottleneck to Learn Rich Representations
Qing Su, Shihao Ji
PiPa++: Towards Unification of Domain Adaptive Semantic Segmentation via Self-supervised Learning
Mu Chen, Zhedong Zheng, Yi Yang
Contrastive Learning Is Not Optimal for Quasiperiodic Time Series
Adrian Atienza, Jakob Bardram, Sadasivan Puthusserypady