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Importance Weighted Adversarial Variational Bayes

机译:重要性加权对抗性变分贝叶斯

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Adversarial variational Bayes (AVB) can infer the parameters of a generative model from the data using approximate maximum likelihood. The likelihood of deep generative models model is intractable. However, it can be approximated by a lower bound obtained in terms of an approximate posterior distribution of the latent variables of the data q. The closer q is to the actual posterior, the tighter the lower bound is. Therefore, by maximizing the lower bound one should expect to also maximize the likelihood. Traditionally, the approximate distribution q is Gaussian. AVB relaxes this limitation and allows for flexible distributions that may lack a closed-form probability density function. Implicit distributions obtained by letting a source of Gaussian noise go through a deep neural network are examples of these distributions. Here, we combine AVB with the importance weighted autoencoder, a technique that has been shown to provide a tighter lower bound on the marginal likelihood. This is expected to lead to a more accurate parameter estimation of the generative model via approximate maximum likelihood. We have evaluated the proposed method on three datasets, MNIST, Fashion MNIST, and Omniglot. The experiments show that the proposed method improves the test log-likelihood of a generative model trained using AVB.
机译:对抗性变分贝叶斯(AVB)可以使用近似最大可能性从数据中推断生成模型的参数。深度生成模型模型的可能性是棘手的。然而,它可以通过根据数据Q的潜在变量的近似后部分布而获得的下界近似。仔细Q是实际的后验,下限较小。因此,通过最大化下限,应该期望最大化可能性。传统上,近似分布Q是高斯。 AVB放宽此限制,并允许灵活的分布,这可能缺乏闭合概率密度函数。通过使高斯噪声源通过深神经网络而获得的隐式分布是这些分布的示例。在这里,我们将AVB与重要性加权自动码器相结合,该技术已被证明在边缘可能性上提供更紧密的下限。这预计将通过近似最大可能性导致生成模型的更准确的参数估计。我们在三个数据集,Mnist,时尚Mnist和Omniglot上评估了所提出的方法。实验表明,该方法提高了使用AVB训练的生成模型的测试对比。

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