Generative Adversarial Networks for Outlier Detection
PyTorch implementation of a GAN architecture for the problem of outlier detection.
generative-adversarial-networks outlier-detection pytorch anomaly-detection article code research paper arxiv:1809.10816

In this article, I will give an introduction to generative adversarial networks and the mathematics behind. Then I will use the Single-Objective Generative Adversarial Active Learning (SO-GAAL) model that was proposed in 2019, to solve a problem of outlier detection.

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