Feb. 6, 2024, 5:45 a.m. | Xin Jin Bohan Li BAAO Xie Wenyao Zhang Jinming Liu Ziqiang Li Tao Yang Wenjun Zeng

cs.LG updates on arXiv.org arxiv.org

Representation disentanglement may help AI fundamentally understand the real world and thus benefit both discrimination and generation tasks. It currently has at least three unresolved core issues: (i) heavy reliance on label annotation and synthetic data -- causing poor generalization on natural scenarios; (ii) heuristic/hand-craft disentangling constraints make it hard to adaptively achieve an optimal training trade-off; (iii) lacking reasonable evaluation metric, especially for the real label-free data. To address these challenges, we propose a \textbf{C}losed-\textbf{L}oop unsupervised representation \textbf{Dis}entanglement approach …

annotation benefit beta constraints core cs.cv cs.lg data diffusion discrimination distillation feedback least loop natural reliance representation synthetic synthetic data tasks unsupervised vae world

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