MLLGJan 14, 2021

Convex Smoothed Autoencoder-Optimal Transport model

arXiv:2101.05679v11 citations
Originality Incremental advance
AI Analysis

This addresses limitations in existing generative models like GANs and VAEs, offering a potential improvement for unsupervised learning applications.

The paper tackles the problems of mode collapse and mode mixture in generative models by developing a new model based on Autoencoder-Optimal Transport, which generates samples resembling observed data without these issues.

Generative modelling is a key tool in unsupervised machine learning which has achieved stellar success in recent years. Despite this huge success, even the best generative models such as Generative Adversarial Networks (GANs) and Variational Autoencoders (VAEs) come with their own shortcomings, mode collapse and mode mixture being the two most prominent problems. In this paper we develop a new generative model capable of generating samples which resemble the observed data, and is free from mode collapse and mode mixture. Our model is inspired by the recently proposed Autoencoder-Optimal Transport (AE-OT) model and tries to improve on it by addressing the problems faced by the AE-OT model itself, specifically with respect to the sample generation algorithm. Theoretical results concerning the bound on the error in approximating the non-smooth Brenier potential by its smoothed estimate, and approximating the discontinuous optimal transport map by a smoothed optimal transport map estimate have also been established in this paper.

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