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Kamus lengkap Kecerdasan Buatan

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Wasserstein Distance

Metric measuring the distance between two probability distributions by quantifying the minimum cost to transform one distribution into another, particularly effective for distributions with low or disjoint support.

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Earth Mover's Distance (EMD)

Geometric interpretation of the Wasserstein distance conceptualized as the minimum work required to move earth mass from one distribution to another, providing a continuous and smooth measure.

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Critic Network

Neural network replacing the discriminator in WGANs, evaluating real and generated samples to produce a scalar score rather than a probability, allowing better correlation with sample quality.

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Lipschitz Continuity

Mathematical property ensuring that the critic function does not vary too rapidly, essential for guaranteeing that the Wasserstein distance remains finite and that training is stable.

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Discriminator vs Critic

Fundamental distinction where the classical discriminator produces classification probabilities while the WGAN critic provides an unbounded continuous score to evaluate sample quality.

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Training Dynamics

Specific learning behavior in WGANs characterized by more constant gradients, progressive convergence, and a linear relationship between loss and generated sample quality.

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Sample Quality Metrics

Evaluation measures where the WGAN loss itself serves as a reliable indicator of generated sample quality, unlike traditional GANs where the loss is not informative.

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WGAN Generator Loss

Generator objective function in WGANs seeking to minimize the Wasserstein distance, providing always informative gradients and avoiding the problem of gradient saturation.

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Critic Loss

Objective function of the critic trained to maximize the difference between scores of real and generated samples under Lipschitz constraint, approximating the exact Wasserstein distance.

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