On importance-weighted autoencoders
Axel Finke, Alexandre H. Thiery

TL;DR
This paper introduces AISLE, an adaptive importance sampling framework that generalizes RWS and encompasses IWAE variants, addressing gradient breakdown issues in importance-weighted autoencoders.
Contribution
It proposes AISLE, a new adaptive importance sampling method that unifies and extends existing IWAE gradient techniques, improving variational inference stability.
Findings
AISLE generalizes RWS and IWAE gradient methods.
It provides a unified framework for importance sampling in variational inference.
The approach addresses gradient breakdown in IWAE as K increases.
Abstract
The importance weighted autoencoder (IWAE) (Burda et al., 2016) is a popular variational-inference method which achieves a tighter evidence bound (and hence a lower bias) than standard variational autoencoders by optimising a multi-sample objective, i.e. an objective that is expressible as an integral over Monte Carlo samples. Unfortunately, IWAE crucially relies on the availability of reparametrisations and even if these exist, the multi-sample objective leads to inference-network gradients which break down as is increased (Rainforth et al., 2018). This breakdown can only be circumvented by removing high-variance score-function terms, either by heuristically ignoring them (which yields the 'sticking-the-landing' IWAE (IWAE-STL) gradient from Roeder et al. (2017)) or through an identity from Tucker et al. (2019) (which yields the 'doubly-reparametrised' IWAE (IWAE-DREG)…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Domain Adaptation and Few-Shot Learning · Machine Learning in Healthcare
MethodsTuckER · Solana Customer Service Number +1-833-534-1729
