What are the challenges associated with training GANs?

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Training Generative Adversarial Networks (GANs) is challenging due to several key factors:

  1. Instability in Training: GANs consist of two competing networks—the generator and the discriminator. Balancing their learning is difficult. If one outpaces the other, training can collapse, resulting in poor outputs or the generator producing the same output repeatedly.

  2. Mode Collapse: This occurs when the generator starts producing a limited variety of outputs, ignoring parts of the target data distribution. It tricks the discriminator with similar-looking samples, reducing diversity in generated data.

  3. Vanishing Gradients: If the discriminator becomes too strong, it can easily distinguish real from fake data, giving the generator very weak gradients to learn from. This slows or halts learning altogether.

  4. Sensitive Hyperparameters: GANs are highly sensitive to learning rates, architecture choices, batch size, and other hyperparameters. Small changes can lead to drastically different results, making tuning difficult.

  5. Evaluation Difficulty: Measuring GAN performance is not straightforward. Unlike supervised models with clear accuracy metrics, assessing image quality or diversity objectively requires complex metrics like Inception Score or Fréchet Inception Distance (FID).

  6. Computational Cost: GANs, especially those for high-resolution data, require significant computational power and training time, making them resource-intensive to develop and test.

These challenges make GAN training a delicate and often trial-and-error-driven process.

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