Unlabeled Data
Unlabeled data, abundant and readily available in many domains, is increasingly leveraged to improve machine learning model performance, particularly in scenarios with limited labeled data. Current research focuses on semi-supervised learning techniques, employing methods like pseudo-labeling, consistency regularization, and self-supervised learning to incorporate unlabeled information into model training, often within frameworks like convolutional neural networks, recurrent neural networks, and transformers. This research is significant because it addresses the high cost and time associated with data labeling, enabling the development of more accurate and efficient models across diverse applications, including image classification, object detection, and natural language processing.
Papers
UFed-GAN: A Secure Federated Learning Framework with Constrained Computation and Unlabeled Data
Achintha Wijesinghe, Songyang Zhang, Siyu Qi, Zhi Ding
Unleashing the Strengths of Unlabeled Data in Pan-cancer Abdominal Organ Quantification: the FLARE22 Challenge
Jun Ma, Yao Zhang, Song Gu, Cheng Ge, Shihao Ma, Adamo Young, Cheng Zhu, Kangkang Meng, Xin Yang, Ziyan Huang, Fan Zhang, Wentao Liu, YuanKe Pan, Shoujin Huang, Jiacheng Wang, Mingze Sun, Weixin Xu, Dengqiang Jia, Jae Won Choi, Natália Alves, Bram de Wilde, Gregor Koehler, Yajun Wu, Manuel Wiesenfarth, Qiongjie Zhu, Guoqiang Dong, Jian He, the FLARE Challenge Consortium, Bo Wang