Unsupervised Adaptation
Unsupervised adaptation focuses on adapting machine learning models to new, unseen data distributions without relying on labeled target data, a crucial challenge in many real-world applications where labeled data is scarce or expensive to obtain. Current research emphasizes efficient adaptation techniques, particularly for large pre-trained models, using methods like self-supervised learning, pseudo-labeling with confidence filtering, and novel loss functions that leverage unlabeled data effectively. This field is significant because it enables the deployment of robust and generalizable models across diverse domains, improving the practicality and reliability of AI systems in various fields, including medical image analysis, autonomous driving, and speech recognition.
Papers
GeoNet: Benchmarking Unsupervised Adaptation across Geographies
Tarun Kalluri, Wangdong Xu, Manmohan Chandraker
Unsupervised Adaptation from Repeated Traversals for Autonomous Driving
Yurong You, Cheng Perng Phoo, Katie Z Luo, Travis Zhang, Wei-Lun Chao, Bharath Hariharan, Mark Campbell, Kilian Q. Weinberger