This paper studies the distribution estimation of contaminated data by the MoM-GAN method, which combines generative adversarial net (GAN) and median-of-mean (MoM) estimation. We use a deep neural network (DNN) with a ReLU activation function to model the generator and discriminator of the GAN. Theoretically, we derive a non-asymptotic error bound for the DNN-based MoM-GAN estimator measured by integral probability metrics with the $b$-smoothness H\"{o}lder class. The error bound decreases essentially as $n^{-b/p}\vee n^{-1/2}$, where $n$ and $p$ are the sample size and the dimension of input data. We give an algorithm for the MoM-GAN method and implement it through two real applications. The numerical results show that the MoM-GAN outperforms other competitive methods when dealing with contaminated data.
翻译:本文研究MM-GAN方法对受污染数据的分布估计,该方法结合了基因对抗网(GAN)和中位值(MOM)估计。我们使用一个带有RELU激活功能的深神经网络(DNN)来模拟GAN的生成器和区分器。理论上,我们得出一个非补救错误,该方法为基于DNNM-GAN的MM-GAN测量器定了一种非补救错误,该方法用美元-吸附性 H\{o}lderer 等级的综合概率度衡量。错误约束主要为$n ⁇ -b/p ⁇ vee n ⁇ - ⁇ _ ⁇ _I/2}美元,其中美元是输入数据的样本大小和维度。我们给出了M-GAN方法的算法,并通过两种实际应用加以执行。数字结果显示,MM-GAN在处理受污染数据时,比其他竞争性方法要差。