Conference Proceedings

Invertible Generative Modeling using Linear Rational Splines

Hadi M Dolatabadi, Sarah Erfani, Christopher Leckie, S Chiappa (ed.), R Calandra (ed.)

International Conference on Artificial Intelligence and Statistics, Vol.108 | AISTATS | Published : 2020

Abstract

Normalizing flows attempt to model an arbitrary probability distribution through a set of invertible mappings. These transformations are required to achieve a tractable Jacobian determinant that can be used in high-dimensional scenarios. The first normalizing flow designs used coupling layer mappings built upon affine transformations. The significant advantage of such models is their easy-to-compute inverse. Nevertheless, making use of affine transformations may limit the expressiveness of such models. Recently, invertible piecewise polynomial functions as a replacement for affine transformations have attracted attention. However, these methods require solving a polynomial equation to calcul..

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