WGAN-SS

Description: WGAN-SS, or Wasserstein GAN with Sample Selection, is a variant of Generative Adversarial Networks (GAN) that aims to improve the training process by selecting samples based on specific criteria. This technique is based on the principle of Wasserstein GAN, which introduces a new metric for measuring the distance between distributions, allowing for more stable and effective convergence compared to traditional GANs. Sample selection in WGAN-SS is performed to prioritize examples that are more representative or exhibit desired characteristics, helping to guide the generation process towards more relevant and higher-quality results. This methodology optimizes data usage during training and reduces the risk of common issues in GANs, such as mode collapse, where the generator produces a limited number of outputs. In summary, WGAN-SS combines the robustness of the Wasserstein approach with a sample selection strategy, resulting in a more efficient and effective model for generating synthetic data.

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