Generating High Fidelity Synthetic Data via Coreset selection and Entropic Regularization

01/31/2023
by   Omead Pooladzandi, et al.
10

Generative models have the ability to synthesize data points drawn from the data distribution, however, not all generated samples are high quality. In this paper, we propose using a combination of coresets selection methods and “entropic regularization” to select the highest fidelity samples. We leverage an Energy-Based Model which resembles a variational auto-encoder with an inference and generator model for which the latent prior is complexified by an energy-based model. In a semi-supervised learning scenario, we show that augmenting the labeled data-set, by adding our selected subset of samples, leads to better accuracy improvement rather than using all the synthetic samples.

READ FULL TEXT
03/31/2022

Generating High Fidelity Data from Low-density Regions using Diffusion Models

Our work focuses on addressing sample deficiency from low-density region...
06/05/2023

Coupled Variational Autoencoder

Variational auto-encoders are powerful probabilistic models in generativ...
10/26/2022

Maximum Likelihood Learning of Energy-Based Models for Simulation-Based Inference

We introduce two synthetic likelihood methods for Simulation-Based Infer...
06/18/2021

Evolving GANs: When Contradictions Turn into Compliance

Limited availability of labeled-data makes any supervised learning probl...
11/26/2020

Regularization with Latent Space Virtual Adversarial Training

Virtual Adversarial Training (VAT) has shown impressive results among re...
12/02/2019

Flow Contrastive Estimation of Energy-Based Models

This paper studies a training method to jointly estimate an energy-based...
09/23/2020

A Variational Auto-Encoder for Reservoir Monitoring

Carbon dioxide Capture and Storage (CCS) is an important strategy in mit...

Please sign up or login with your details

Forgot password? Click here to reset