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<p>where one agent's gain is another agent's loss.</p>

<p>Given a training set, this technique learns to generate new data with the same statistics as the training set. For example, a GAN trained on photographs can generate new photographs that look at least superficially authentic to human observers, having many realistic characteristics. Though originally proposed as a form of <a href="page.php?w=generative_model">generative model</a> for <a href="page.php?w=unsupervised_learning">unsupervised learning</a>, GANs have also proved useful for <a href="page.php?w=semi-supervised_learning">semi-supervised learning</a>,</p><p>
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