Invariant Feature
Invariant feature learning aims to extract data representations that are robust to variations in data distribution, enabling improved generalization across different environments or tasks. Current research focuses on developing algorithms and model architectures (including neural networks, graph neural networks, and diffusion models) that learn these invariant features, often employing techniques like knowledge distillation, multi-task learning, and contrastive learning. This research is significant because it addresses the limitations of traditional machine learning methods that struggle with out-of-distribution data, impacting diverse applications such as medical image analysis, sentiment analysis, and object detection. The development of robust invariant features promises to enhance the reliability and generalizability of machine learning models in real-world scenarios.
Papers
A case for using rotation invariant features in state of the art feature matchers
Georg Bökman, Fredrik Kahl
Domain Invariant Model with Graph Convolutional Network for Mammogram Classification
Churan Wang, Jing Li, Xinwei Sun, Fandong Zhang, Yizhou Yu, Yizhou Wang
Color Invariant Skin Segmentation
Han Xu, Abhijit Sarkar, A. Lynn Abbott