We present a probabilistic model with discrete latent variables that control the computation time in deep learning models such as ResNets and LSTMs. A prior on the latent variables expresses the preference for faster computation. The amount of computation for an input is determined via amortized maximum a posteriori (MAP) inference. MAP inference is performed using a novel stochastic variational optimization method. The recently proposed adaptive computation time mechanism can be seen as an ad-hoc relaxation of this model. We demonstrate training using the general-purpose concrete relaxation of discrete variables. Evaluation on ResNet shows that our method matches the speed-accuracy trade-off of adaptive computation time, while allowing for...
Deep learning methods have recently started dominating the machine learning world as they offer stat...
Probabilistic inference is at the core of many recent advances in machine learning. Unfortunately, ...
Numerous models for supervised and reinforcement learning benefit from combinations of discrete and ...
Probabilistic modeling lets us infer, predict and make decisions based on incomplete or noisy data. ...
Stochastic variational inference finds good posterior approximations of probabilistic models with ve...
Stochastic variational inference finds good posterior approximations of probabilistic models with ve...
This paper applies a generative deep learning model, namely a Variational Autoencoder, on probabilis...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
285 pagesProbabilistic modeling, as known as probabilistic machine learning, provides a principled f...
How can we perform efficient inference and learning in directed probabilistic models, in the presenc...
Recursive Conditioning, RC, is an any-space algorithm for exact inference in Bayesian networks, whi...
International audienceIt is common to evaluate the performance of a machine learning model by measur...
Recent advances in statistical inference have significantly expanded the toolbox of probabilistic mo...
The ability to leverage large-scale hardware parallelism has been one of the key enablers of the acc...
An important aspect of probabilistic inference in embedded real-time systems is flexibility to handl...
Deep learning methods have recently started dominating the machine learning world as they offer stat...
Probabilistic inference is at the core of many recent advances in machine learning. Unfortunately, ...
Numerous models for supervised and reinforcement learning benefit from combinations of discrete and ...
Probabilistic modeling lets us infer, predict and make decisions based on incomplete or noisy data. ...
Stochastic variational inference finds good posterior approximations of probabilistic models with ve...
Stochastic variational inference finds good posterior approximations of probabilistic models with ve...
This paper applies a generative deep learning model, namely a Variational Autoencoder, on probabilis...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
285 pagesProbabilistic modeling, as known as probabilistic machine learning, provides a principled f...
How can we perform efficient inference and learning in directed probabilistic models, in the presenc...
Recursive Conditioning, RC, is an any-space algorithm for exact inference in Bayesian networks, whi...
International audienceIt is common to evaluate the performance of a machine learning model by measur...
Recent advances in statistical inference have significantly expanded the toolbox of probabilistic mo...
The ability to leverage large-scale hardware parallelism has been one of the key enablers of the acc...
An important aspect of probabilistic inference in embedded real-time systems is flexibility to handl...
Deep learning methods have recently started dominating the machine learning world as they offer stat...
Probabilistic inference is at the core of many recent advances in machine learning. Unfortunately, ...
Numerous models for supervised and reinforcement learning benefit from combinations of discrete and ...