Split Learning
Split learning is a distributed machine learning approach aiming to train models collaboratively across multiple devices while preserving data privacy by avoiding raw data sharing. Current research focuses on enhancing privacy through techniques like differential privacy and homomorphic encryption, optimizing model architectures (including neural networks, vision transformers, and large language models) for efficient split training, and addressing challenges like biased gradients and communication overhead in heterogeneous networks. This approach holds significant promise for applications requiring both collaborative model training and stringent data protection, such as those in healthcare, satellite communications, and edge computing.
Papers
September 3, 2024
September 2, 2024
August 25, 2024
August 2, 2024
July 22, 2024
July 19, 2024
July 12, 2024
July 2, 2024
June 20, 2024
May 31, 2024
May 29, 2024
May 27, 2024
May 22, 2024
May 12, 2024
May 6, 2024
April 14, 2024
March 24, 2024
March 8, 2024
March 3, 2024
February 29, 2024