Why is public pretraining necessary for private model training?
In the privacy-utility tradeoff of a model trained on benchmark language and vision tasks,
remarkable improvements have been widely reported when the model is pretrained on …
remarkable improvements have been widely reported when the model is pretrained on …
Differentially private latent diffusion models
Diffusion models (DMs) are widely used for generating high-quality high-dimensional
images in a non-differentially private manner. To address this challenge, recent papers …
images in a non-differentially private manner. To address this challenge, recent papers …
Private gans, revisited
We show that the canonical approach for training differentially private GANs--updating the
discriminator with differentially private stochastic gradient descent (DPSGD)--can yield …
discriminator with differentially private stochastic gradient descent (DPSGD)--can yield …
A unified view of differentially private deep generative modeling
The availability of rich and vast data sources has greatly advanced machine learning
applications in various domains. However, data with privacy concerns comes with stringent …
applications in various domains. However, data with privacy concerns comes with stringent …
Meticulously selecting 1% of the dataset for pre-training! generating differentially private images data with semantics query
Differential Privacy (DP) image data synthesis, which leverages the DP technique to
generate synthetic data to replace the sensitive data, allowing organizations to share and …
generate synthetic data to replace the sensitive data, allowing organizations to share and …
Synthesizing High-Utility Tabular Data with Enhanced Privacy Via Split-and-Discard Pre-Training
L Luo, H Huang, B Zhang, Y Xie… - … 2023-2023 IEEE …, 2023 - ieeexplore.ieee.org
Data sharing has led to the emergence of the deep generative model (DGM) with differential
privacy for synthesizing tabular data. However, existing methods struggle to synthesize high …
privacy for synthesizing tabular data. However, existing methods struggle to synthesize high …
Quantifying Sample Anonymity in Score-Based Generative Models with Adversarial Fingerprinting
M Dombrowski, B Kainz - arXiv preprint arXiv:2306.01363, 2023 - arxiv.org
Recent advances in score-based generative models have led to a huge spike in the
development of downstream applications using generative models ranging from data …
development of downstream applications using generative models ranging from data …
Towards privacy-preserving machine learning: generative modeling and discriminative analysis
D Chen - 2023 - publikationen.sulb.uni-saarland.de
The digital era is characterized by the widespread availability of rich data, which has fueled
the growth of machine learning applications across diverse fields such as computer vision …
the growth of machine learning applications across diverse fields such as computer vision …
PAC Privacy Preserving Diffusion Models
Q Xu - 2024 - search.proquest.com
Data privacy protection is garnering increased attention among researchers. Diffusion
models (DMs), particularly with strict differential privacy, can potentially produce images with …
models (DMs), particularly with strict differential privacy, can potentially produce images with …
Quantifying Anonymity in Score-Based Generators with Adversarial Fingerprinting
M Dombrowski, B Kainz - openreview.net
Recent advances in score-based generative models have led to a huge spike in the
development of downstream applications using generative models ranging from data …
development of downstream applications using generative models ranging from data …