Disentanglement Capability
Disentanglement in machine learning aims to decompose complex data into independent, interpretable factors, improving model controllability, interpretability, and generalizability. Current research focuses on developing improved metrics for evaluating disentanglement, exploring various model architectures like variational autoencoders (VAEs) and diffusion models, and applying disentanglement techniques to diverse domains including image generation, speech processing, and medical image analysis. This work is significant because disentangled representations enhance model understanding and facilitate the development of more robust and reliable AI systems across numerous applications.
Papers
DisEnvisioner: Disentangled and Enriched Visual Prompt for Customized Image Generation
Jing He, Haodong Li, Yongzhe Hu, Guibao Shen, Yingjie Cai, Weichao Qiu, Ying-Cong Chen
Semi-Supervised Contrastive VAE for Disentanglement of Digital Pathology Images
Mahmudul Hasan, Xiaoling Hu, Shahira Abousamra, Prateek Prasanna, Joel Saltz, Chao Chen