估计gan的隐似然及其在异常检测中的应用

Shaogang Ren, Dingcheng Li, Zhixin Zhou, P. Li
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引用次数: 10

摘要

深度模型和生成模型的蓬勃发展为高维分布的建模提供了途径。生成式对抗网络(GANs)可以近似数据分布,并从学习到的数据流形中生成数据样本。在本文中,我们提出了一种估计GAN模型的隐式可能性的方法。利用发电机的方差网络可以学习发电机的稳定反函数。样本分布的局部方差可以用隐空间的归一化距离来近似。仿真研究和现实世界数据集的似然测试验证了所提出的算法,该算法在这些任务中优于几种基线方法。该方法已进一步应用于异常检测。实验表明,该方法可以在真实数据集上达到最先进的异常检测性能。
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Estimate the Implicit Likelihoods of GANs with Application to Anomaly Detection
The thriving of deep models and generative models provides approaches to model high dimensional distributions. Generative adversarial networks (GANs) can approximate data distributions and generate data samples from the learned data manifolds as well. In this paper, we propose an approach to estimate the implicit likelihoods of GAN models. A stable inverse function of the generator can be learned with the help of a variance network of the generator. The local variance of the sample distribution can be approximated by the normalized distance in the latent space. Simulation studies and likelihood testing on real-world data sets validate the proposed algorithm, which outperforms several baseline methods in these tasks. The proposed method has been further applied to anomaly detection. Experiments show that the method can achieve state-of-the-art anomaly detection performance on real-world data sets.
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