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<oembed><version>1.0</version><provider_name>Microsoft Research</provider_name><provider_url>https://www.microsoft.com/en-us/research</provider_url><author_name>Pengchuan Zhang</author_name><author_url>https://www.microsoft.com/en-us/research/people/penzhan/</author_url><title>On the Discrimination-Generalization Tradeoff in GANs - Microsoft Research</title><type>rich</type><width>600</width><height>338</height><html>&lt;blockquote class="wp-embedded-content" data-secret="KERz3KdkjT"&gt;&lt;a href="https://www.microsoft.com/en-us/research/publication/discrimination-generalization-tradeoff-gans/"&gt;On the Discrimination-Generalization Tradeoff in GANs&lt;/a&gt;&lt;/blockquote&gt;&lt;iframe sandbox="allow-scripts" security="restricted" src="https://www.microsoft.com/en-us/research/publication/discrimination-generalization-tradeoff-gans/embed/#?secret=KERz3KdkjT" width="600" height="338" title="&#x201C;On the Discrimination-Generalization Tradeoff in GANs&#x201D; &#x2014; Microsoft Research" data-secret="KERz3KdkjT" frameborder="0" marginwidth="0" marginheight="0" scrolling="no" class="wp-embedded-content"&gt;&lt;/iframe&gt;&lt;script type="text/javascript"&gt;
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</html><description>Generative adversarial training can be generally understood as minimizing certain moment matching loss defined by a set of discriminator functions, typically neural networks. The discriminator set should be large enough to be able to uniquely identify the true distribution (discriminative), and also be small enough to go beyond memorizing samples (generalizable). In this paper, we [&hellip;]</description></oembed>
