Experiments for understanding disentanglement in VAE latent representations
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Updated
Feb 2, 2023 - Python
Experiments for understanding disentanglement in VAE latent representations
A curated list of awesome work on VAEs, disentanglement, representation learning, and generative models.
Dataset to assess the disentanglement properties of unsupervised learning methods
Pytorch implementation of JointVAE, a framework for disentangling continuous and discrete factors of variation 🌟
Replicating "Understanding disentangling in β-VAE"
Time-Lapse Disentanglement With Conditional GANs [SIGGRAPH 2022]
🧶 Modular VAE disentanglement framework for python built with PyTorch Lightning ▸ Including metrics and datasets ▸ With strongly supervised, weakly supervised and unsupervised methods ▸ Easily configured and run with Hydra config ▸ Inspired by disentanglement_lib
Code for "Predicting Cellular Responses to Novel Drug Perturbations at a Single-Cell Resolution", NeurIPS 2022.
[CVPR2020] Hi-CMD: Hierarchical Cross-Modality Disentanglement for Visible-Infrared Person Re-Identification
Pytorch implementation of Learning Disentangled Representations via Mutual Information Estimation (ECCV 2020)
The official implementation of "Disentangling Long and Short-Term Interests for Recommendation" (WWW '22)
Orthogonal Jacobian Regularization for Unsupervised Disentanglement in Image Generation (ICCV 2021)
Implementation of "Disentangled Representation Learning for Non-Parallel Text Style Transfer(ACL 2019)" in Pytorch
This repository summarizes the material gathered for the tutorial on learning disentangled representations in the imaging domain, and serves as a roadmap for the disentanglement aficionados.
Dataset and model for disentangling chat on IRC
Library implementing state-of-the-art Concept-based and Disentanglement Learning methods for Explainable AI
Official pytorch implementation of "Scaling-up Disentanglement for Image Translation", ICCV 2021.
Official code for Interspeech 2023 paper "Self-supervised Fine-tuning for Improved Content Representations by Speaker-invariant Clustering"
[ICML 2020] InfoGAN-CR and ModelCentrality: Self-supervised Model Training and Selection for Disentangling GANs
Unsupervised Deep Disentangled Representation of Single-Cell Omics
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