Generative models, such as Generative Adversarial Networks (GANs), have been used for unsupervised anomaly detection. While performance keeps improving, several limitations exist particularly attributed to difficulties at capturing multimodal supports and to the ability to approximate the underlying distribution closer to the tails, i.e. the boundary of the distribution's support. This paper proposes an approach that attempts to alleviate such shortcomings. We propose an invertible-residual-network-based model, the Boundary of Distribution Support Generator (BDSG). GANs generally do not guarantee the existence of a probability distribution and here, we use the recently developed Invertible Residual Network (IResNet) and Residual Flow (ResFlow), for density estimation. These models have not yet been used for anomaly detection. We leverage IResNet and ResFlow for Out-of-Distribution (OoD) sample detection and for sample generation on the boundary using a compound loss function that forces the samples to lie on the boundary. The BDSG addresses non-convex support, disjoint components, and multimodal distributions. Results on synthetic data and data from multimodal distributions, such as MNIST and CIFAR-10, demonstrate competitive performance compared to methods from the literature.
翻译:生成模型,如General Adversarial Networks(GANs),已被用于未受监督的异常现象检测,虽然绩效不断改善,但存在若干限制,主要原因是难以获得多式联运支持,以及难以接近尾部,即分布支持的边界,因此难以将基本分布接近尾部,本文件提出一种办法,以努力减轻这些缺陷。我们建议采用一个不可逆再现的网络模型,即配送支持发电机的边界。GANs一般不保证存在概率分布,在这里,我们使用最近开发的不可逆残余网络(IResNet)和残余流动(ResFlow)进行密度估计。这些模型尚未用于反常现象检测。我们利用IResNet和ResFlow进行抽样检测,并利用复合损失功能在边界上采集样本。BDSG处理的是非convex支持、不连接组件和多式联运分布。关于合成数据和竞争性数据的结果,如IMIS和IMIS的比较性业绩,如IMR-10号分布、综合数据和比较性数据,如IMIS-10号分销。