Domain Generalization
Domain generalization (DG) aims to train machine learning models that perform well on unseen data, overcoming the limitations of models trained and tested on similar data distributions. Current research focuses on improving model robustness through techniques like self-supervised learning, data augmentation (including novel methods like style prompting and spectrum synthesis), and the use of foundation models and parameter-efficient fine-tuning. These advancements are crucial for deploying reliable AI systems in real-world applications where data variability is inevitable, particularly in fields like medical imaging, autonomous systems, and natural language processing.
386papers
Papers - Page 16
March 20, 2023
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Domain Generalization via Nuclear Norm Regularization
Zhenmei Shi, Yifei Ming, Ying Fan, Frederic Sala, Yingyu LiangDomain Generalization in Machine Learning Models for Wireless Communications: Concepts, State-of-the-Art, and Open Issues
Mohamed Akrout, Amal Feriani, Faouzi Bellili, Amine Mezghani, Ekram Hossain
March 10, 2023
March 1, 2023
Towards domain generalisation in ASR with elitist sampling and ensemble knowledge distillation
Rehan Ahmad, Md Asif Jalal, Muhammad Umar Farooq, Anna Ollerenshaw, Thomas HainDomain-aware Triplet loss in Domain Generalization
Kaiyu Guo, Brian LovellFirst-shot anomaly sound detection for machine condition monitoring: A domain generalization baseline
Noboru Harada, Daisuke Niizumi, Yasunori Ohishi, Daiki Takeuchi, Masahiro Yasuda
February 23, 2023
February 22, 2023
February 18, 2023
Towards Radar Emitter Recognition in Changing Environments with Domain Generalization
Honglin Wu, Xueqiong Li, Long Lan, Liyang Xu, Yuhua TangStyLIP: Multi-Scale Style-Conditioned Prompt Learning for CLIP-based Domain Generalization
Shirsha Bose, Ankit Jha, Enrico Fini, Mainak Singha, Elisa Ricci, Biplab Banerjee
February 14, 2023
February 12, 2023