具有潜在稀疏高斯过程的完全贝叶斯自动编码器。

Ba-Hien Tran, Babak Shahbaba, Stephan Mandt, Maurizio Filippone
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引用次数: 0

摘要

我们提出了一种完全贝叶斯自动编码器模型,它以贝叶斯方式处理局部潜变量和全局解码器参数。这种方法允许灵活的先验和后验近似,同时保持较低的推理成本。为此,我们引入了一种摊销 MCMC 方法,利用隐式随机网络从局部潜变量的后验中学习采样。此外,我们还对模型进行了扩展,在潜变量空间中加入了稀疏高斯过程先验,允许对诱导点和内核超参数进行全贝叶斯处理,从而提高了可扩展性。此外,我们还启用了潜空间的深度高斯过程先验,并处理了缺失数据。我们在一系列侧重于动态表示学习和生成建模的实验中对我们的模型进行了评估,结果表明,与结合高斯过程和自动编码器的现有方法相比,我们的方法具有很强的性能。
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Fully Bayesian Autoencoders with Latent Sparse Gaussian Processes.

We present a fully Bayesian autoencoder model that treats both local latent variables and global decoder parameters in a Bayesian fashion. This approach allows for flexible priors and posterior approximations while keeping the inference costs low. To achieve this, we introduce an amortized MCMC approach by utilizing an implicit stochastic network to learn sampling from the posterior over local latent variables. Furthermore, we extend the model by incorporating a Sparse Gaussian Process prior over the latent space, allowing for a fully Bayesian treatment of inducing points and kernel hyperparameters and leading to improved scalability. Additionally, we enable Deep Gaussian Process priors on the latent space and the handling of missing data. We evaluate our model on a range of experiments focusing on dynamic representation learning and generative modeling, demonstrating the strong performance of our approach in comparison to existing methods that combine Gaussian Processes and autoencoders.

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