{"slug": "imbalance-robust-and-sampling-efficient-continuous-conditional-gans-via-adaptive", "title": "Imbalance-Robust and Sampling-Efficient Continuous Conditional GANs via Adaptive Vicinal Learning and Auxiliary Regularization", "summary": "Researchers propose CcGAN-AVAR, an imbalance-robust extension of Continuous conditional GAN that uses adaptive vicinal learning and auxiliary regularization to improve generation quality and label consistency. The method achieves 300x–2000x faster inference than diffusion models while maintaining strong performance on imbalanced datasets.", "body_md": "arXiv:2508.01725v5 Announce Type: replace\nAbstract: Recent advances in continuous conditional generative modeling, including Continuous conditional Generative Adversarial Network (CcGAN) and Continuous Conditional Diffusion Model (CCDM), estimate high-dimensional data distributions conditioned on scalar regression labels such as angles, ages, or temperatures. However, fixed-size vicinal training in CcGAN can be sensitive to non-uniform label densities, whereas CCDM relies on computationally expensive iterative sampling. To address these issues, we propose CcGAN-AVAR, an imbalance-aware extension of CcGAN that combines soft/hybrid adaptive vicinity with auxiliary discriminator-guided regularization. The adaptive vicinity constructs a label-dependent local radius according to the available samples around each target condition, and the multi-task discriminator supplies both a regression signal for label consistency and a density-ratio-estimation signal for distribution matching. We further provide a theoretical interpretation characterizing how adaptive vicinal weighting affects the local bias-variance behavior of the discriminator target, how hybrid truncation reduces objective-level cross-condition mixing, and how the density-ratio-based generator penalty approximates a Pearson Chi-square discrepancy up to the estimation error of the density-ratio branch. Extensive experiments on four datasets, including the newly constructed imbalanced RC-49-I, covering resolutions from 64x64 to 256x256 across eleven settings, demonstrate that CcGAN-AVAR obtains strong generation quality and label consistency while preserving the one-step sampling efficiency of GANs, achieving 300x--2000x faster inference than CCDM.", "url": "https://wpnews.pro/news/imbalance-robust-and-sampling-efficient-continuous-conditional-gans-via-adaptive", "canonical_source": "https://www.machinebrief.com/news/imbalance-robust-and-sampling-efficient-continuous-condition-vo35", "published_at": "2026-07-08 04:00:00+00:00", "updated_at": "2026-07-08 04:19:33.330794+00:00", "lang": "en", "topics": ["generative-ai", "machine-learning", "neural-networks"], "entities": ["CcGAN", "CCDM", "CcGAN-AVAR", "RC-49-I"], "alternates": {"html": "https://wpnews.pro/news/imbalance-robust-and-sampling-efficient-continuous-conditional-gans-via-adaptive", "markdown": "https://wpnews.pro/news/imbalance-robust-and-sampling-efficient-continuous-conditional-gans-via-adaptive.md", "text": "https://wpnews.pro/news/imbalance-robust-and-sampling-efficient-continuous-conditional-gans-via-adaptive.txt", "jsonld": "https://wpnews.pro/news/imbalance-robust-and-sampling-efficient-continuous-conditional-gans-via-adaptive.jsonld"}}