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
BenchMD: A Benchmark for Unified Learning on Medical Images and Sensors
Kathryn Wantlin, Chenwei Wu, Shih-Cheng Huang, Oishi Banerjee, Farah Dadabhoy, Veeral Vipin Mehta, Ryan Wonhee Han, Fang Cao, Raja R. Narayan, Errol Colak, Adewole Adamson, Laura Heacock, Geoffrey H. Tison, Alex Tamkin, Pranav Rajpurkar
Self-Supervised Learning from Non-Object Centric Images with a Geometric Transformation Sensitive Architecture
Taeho Kim, Jong-Min Lee
Enhancing Self-Supervised Learning for Remote Sensing with Elevation Data: A Case Study with Scarce And High Level Semantic Labels
Omar A. Castaño-Idarraga, Raul Ramos-Pollán, Freddie Kalaitzis
In-Distribution and Out-of-Distribution Self-supervised ECG Representation Learning for Arrhythmia Detection
Sahar Soltanieh, Javad Hashemi, Ali Etemad
A surprisingly simple technique to control the pretraining bias for better transfer: Expand or Narrow your representation
Florian Bordes, Samuel Lavoie, Randall Balestriero, Nicolas Ballas, Pascal Vincent
Decoupling anomaly discrimination and representation learning: self-supervised learning for anomaly detection on attributed graph
YanMing Hu, Chuan Chen, BoWen Deng, YuJing Lai, Hao Lin, ZiBin Zheng, Jing Bian