HTGAN: heavy-tail GAN for multivariate dependent extremes via latent-dimensional control
收藏Taylor & Francis Group2025-11-11 更新2026-04-16 收录
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https://tandf.figshare.com/articles/dataset/HTGAN_heavy-tail_GAN_for_multivariate_dependent_extremes_via_latent-dimensional_control/30594191/1
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资源简介:
Dealing with extreme values is a key challenge in probabilistic modeling, relevant to economics, engineering, and life sciences. Standard GANs, built on light-tailed noise, fail to capture heavy-tail behavior and dependence in extreme regions. We propose HTGAN, a modified GAN with heavy-tailed input noise. Using the stable tail dependence function (stdf) from extreme-value theory, we derive a worst-case error bound for approximating the stdf of the target, scaling as N−1/(d−1), where <i>N</i> is the latent noise dimension and the data dimension. Thus, higher latent dimension improves dependence estimation. Experiments on synthetic and real heavy-tailed datasets confirm that HTGAN better reproduces extreme dependence than classical light-tailed GANs, with accuracy improving as latent dimension increases.
提供机构:
Gobet, Emmanuel; Pachebat, Jean; Girard, Stéphane
创建时间:
2025-11-11



