Hybrid models with deep and invertible features

We propose a neural hybrid model consisting of a linear model defined on a set of features computed by a deep, invertible transformation (i.e. a normalizing flow). An attractive property of our model is that both p(features), the density of the features, and p(targets|features), the predictive distr...

Полное описание

Библиографические подробности
Главные авторы: Eric, N, Matsukawa, A, Teh, Y, Gorur, D, Lakshminarayanan, B
Формат: Conference item
Опубликовано: Proceedings of Machine Learning Research 2019