By composing graphical models with deep learning architectures, we learn generative models with the strengths of both frameworks. The structured variational autoencoder (SVAE) inherits structure and interpretability from graphical models, and flexible likelihoods for high-dimensional data from deep learning, but poses substantial optimization challenges. We propose novel algorithms for learning SVAEs, and are the first to demonstrate the SVAE's ability to handle multimodal uncertainty when data is missing by incorporating discrete latent variables. Our memory-efficient implicit differentiation scheme makes the SVAE tractable to learn via gradient descent, while demonstrating robustness to incomplete optimization. To more rapidly learn accur...
Deep generative models have been wildly successful at learning coherent latent representations for c...
Generative models, especially ones that are parametrized by deep neural networks, are powerful unsup...
Inference models are a key component in scaling variational inference to deep latent variable models...
Discrete variational auto-encoders (VAEs) are able to represent semantic latent spaces in generative...
While deep generative models have succeeded in image processing, natural language processing, and re...
Deep generative models allow us to learn hidden representations of data and generate new examples. T...
Recent machine learning advances in computer vision and speech recognition have been largely driven ...
This paper proposes a new type of generative model that is able to quickly learn a latent representa...
Newly developed machine learning algorithms are heavily dependent on the choice of data representati...
Deep generative models are widely used for modelling high-dimensional time series, such as video ani...
In this paper, we investigate the algorithmic stability of unsupervised representation learning with...
A deep generative model is characterized by a representation space, its distribution, and a neural n...
Deep generative models have de facto emerged as state of the art when it comes to density estimation...
Deep generative models are a class of techniques that train deep neural networks to model the distri...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Deep generative models have been wildly successful at learning coherent latent representations for c...
Generative models, especially ones that are parametrized by deep neural networks, are powerful unsup...
Inference models are a key component in scaling variational inference to deep latent variable models...
Discrete variational auto-encoders (VAEs) are able to represent semantic latent spaces in generative...
While deep generative models have succeeded in image processing, natural language processing, and re...
Deep generative models allow us to learn hidden representations of data and generate new examples. T...
Recent machine learning advances in computer vision and speech recognition have been largely driven ...
This paper proposes a new type of generative model that is able to quickly learn a latent representa...
Newly developed machine learning algorithms are heavily dependent on the choice of data representati...
Deep generative models are widely used for modelling high-dimensional time series, such as video ani...
In this paper, we investigate the algorithmic stability of unsupervised representation learning with...
A deep generative model is characterized by a representation space, its distribution, and a neural n...
Deep generative models have de facto emerged as state of the art when it comes to density estimation...
Deep generative models are a class of techniques that train deep neural networks to model the distri...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Deep generative models have been wildly successful at learning coherent latent representations for c...
Generative models, especially ones that are parametrized by deep neural networks, are powerful unsup...
Inference models are a key component in scaling variational inference to deep latent variable models...