Skip to yearly menu bar Skip to main content


Poster

Unconstrained Monotonic Neural Networks

Antoine Wehenkel · Gilles Louppe

East Exhibition Hall B, C #54

Keywords: [ Deep Learning ] [ Generative Models; Probabilistic Methods ] [ Algorithms -> Density Estimation; Deep Learning -> Deep Autoencoders; Deep Learning ]


Abstract:

Monotonic neural networks have recently been proposed as a way to define invertible transformations. These transformations can be combined into powerful autoregressive flows that have been shown to be universal approximators of continuous probability distributions. Architectures that ensure monotonicity typically enforce constraints on weights and activation functions, which enables invertibility but leads to a cap on the expressiveness of the resulting transformations. In this work, we propose the Unconstrained Monotonic Neural Network (UMNN) architecture based on the insight that a function is monotonic as long as its derivative is strictly positive. In particular, this latter condition can be enforced with a free-form neural network whose only constraint is the positiveness of its output. We evaluate our new invertible building block within a new autoregressive flow (UMNN-MAF) and demonstrate its effectiveness on density estimation experiments. We also illustrate the ability of UMNNs to improve variational inference.

Live content is unavailable. Log in and register to view live content