May 27, 2022, 6:50 p.m. | Ifigeneia Apostolopoulou

Machine Learning Blog | ML@CMU | Carnegie Mellon University blog.ml.cmu.edu

Figure 1: Overview of a local variational layer (left) and an attentive variational layer (right) proposed in this post. Attention blocks in the variational layer are responsible for capturing long-range statistical dependencies in the latent space of the hierarchy. Generative models are a class of machine learning models that are able to generate novel data samples such as fictional celebrity faces, digital artwork, and scenic images. Currently, the most powerful generative models are deep probabilistic models. This class of models …

approximate inference computer vision deep learning deep probabilistic models inference latent variable model machine learning probabilistic deep learning research

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