Stanford CS236: Deep Generative Models I 2023 I Lecture 8 - GANs

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Stefano Ermon
Associate Professor of Computer Science, Stanford University
cs.stanford.edu/~ermon/
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Пікірлер: 3

  • @CPTSMONSTER
    @CPTSMONSTER25 күн бұрын

    17:55? Log-likelihood derivation 21:50 Parameterize f theta or f inverse theta 28:50 Desiderata, Jacobians of special structure for fast determinant computation, lower triangular matrix determinant is product of diagonal elements 33:00? Derivation of Jacobian (simple layered coupling) 36:55 Simple layered coupling model is already able to map a complex distribution over pixels to a Gaussian (volume preserving) 42:00? Derivation of Jacobian (layered coupling with scaled shifts) 45:30? Generation process is deterministic 47:20 Sample data to get z, interpolation of z generates interpolated samples. Proves that while z are not compressive, they are meaningful latent representations. 50:00? Flow interpretation of autoregressive gaussian model 56:00? Inverse mapping computed in parallel 56:30? Jacobian lower diagonal because x_i only depends on z_

  • @legendarystuff6971
    @legendarystuff6971Ай бұрын

    First

  • @chongsun7872
    @chongsun78728 күн бұрын

    This is the wrong title I think. It should be Flow models not GANs