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Theory of Generative Deep Learning II:Probe Landscape of Empirical Error via Norm Based Capacity Control

机译:生成型深度学习理论II:基于规范的容量控制的经验误差探究风景

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Despite its remarkable empirical success as a highly competitive branch of artificial intelligence, deep learning is often blamed for its widely known low interpretation and lack of firm and rigorous mathematical foundation. However, most theoretical endeavor is devoted in discriminative deep learning case, whose complementary part is generative deep learning. To the best of our knowledge, we firstly highlight landscape of empirical error in generative case to complete the full picture through exquisite design of image super resolution under norm based capacity control. Our theoretical advance in interpretation of the training dynamic is achieved from both mathematical and biological sides.
机译:尽管深度学习作为人工智能的高度竞争性分支取得了显著的经验成功,但经常因深度学习的低解释性和缺乏牢固严格的数学基础而被指责为深度学习。然而,大多数理论上的努力都致力于判别性深度学习案例,其补充部分是生成性深度学习。据我们所知,我们首先在生成案例中突出显示经验错误的局面,以通过基于规范的容量控制下的图像超分辨率的精妙设计来完成全图。我们在解释训练动力方面的理论进展是从数学和生物学两方面实现的。

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