Learning Implicit Generative Models with Theoretical Guarantees

02/07/2020
by   Yuan Gao, et al.
0

We propose a unified framework for implicit generative modeling (UnifiGem) with theoretical guarantees by integrating approaches from optimal transport, numerical ODE, density-ratio (density-difference) estimation and deep neural networks. First, the problem of implicit generative learning is formulated as that of finding the optimal transport map between the reference distribution and the target distribution, which is characterized by a totally nonlinear Monge-Ampère equation. Interpreting the infinitesimal linearization of the Monge-Ampère equation from the perspective of gradient flows in measure spaces leads to the continuity equation or the McKean-Vlasov equation. We then solve the McKean-Vlasov equation numerically using the forward Euler iteration, where the forward Euler map depends on the density ratio (density difference) between the distribution at current iteration and the underlying target distribution. We further estimate the density ratio (density difference) via deep density-ratio (density-difference) fitting and derive explicit upper bounds on the estimation error. Experimental results on both synthetic datasets and real benchmark datasets support our theoretical findings and demonstrate the effectiveness of UnifiGem.

READ FULL TEXT
research
12/11/2020

Generative Learning With Euler Particle Transport

We propose an Euler particle transport (EPT) approach for generative lea...
research
07/09/2023

A generative flow for conditional sampling via optimal transport

Sampling conditional distributions is a fundamental task for Bayesian in...
research
06/19/2021

Deep Generative Learning via Schrödinger Bridge

We propose to learn a generative model via entropy interpolation with a ...
research
06/09/2019

The Implicit Metropolis-Hastings Algorithm

Recent works propose using the discriminator of a GAN to filter out unre...
research
06/08/2022

Out-of-Distribution Detection with Class Ratio Estimation

Density-based Out-of-distribution (OOD) detection has recently been show...
research
09/22/2022

Turning Normalizing Flows into Monge Maps with Geodesic Gaussian Preserving Flows

Normalizing Flows (NF) are powerful likelihood-based generative models t...
research
02/24/2021

Density Sketches for Sampling and Estimation

We introduce Density sketches (DS): a succinct online summary of the dat...

Please sign up or login with your details

Forgot password? Click here to reset