PH-VAE: A Polynomial Hierarchical Variational Autoencoder Towards Disentangled Representation Learning
Xi Chen, Shaofan Li

TL;DR
This paper introduces PH-VAE, a novel variational autoencoder with polynomial hierarchical structure and a new divergence measure, significantly improving data distribution modeling, reconstruction quality, and disentangled representation learning.
Contribution
The paper proposes PH-VAE with a polynomial hierarchical structure and a Polynomial Divergence, enhancing generative accuracy and interpretability over traditional VAEs.
Findings
Improved data distribution accuracy and reconstruction quality.
Enhanced disentangled representation learning ability.
Systematic improvements in generative performance with Polynomial Divergence.
Abstract
The variational autoencoder (VAE) is a simple and efficient generative artificial intelligence method for modeling complex probability distributions of various types of data, such as images and texts. However, it suffers some main shortcomings, such as lack of interpretability in the latent variables, difficulties in tuning hyperparameters while training, producing blurry, unrealistic downstream outputs or loss of information due to how it calculates loss functions and recovers data distributions, overfitting, and origin gravity effect for small data sets, among other issues. These and other limitations have caused unsatisfactory generation effects for the data with complex distributions. In this work, we proposed and developed a polynomial hierarchical variational autoencoder (PH-VAE), in which we used a polynomial hierarchical date format to generate or to reconstruct the data…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Digital Media Forensic Detection
MethodsGravity
