We consider the problem of enhancing user privacy in common data analysis and machine learning development tasks, such as data annotation and inspection, by substituting the real data with samples from a generative adversarial network. We propose employing Bayesian differential privacy as the means to achieve a rigorous theoretical guarantee while providing a better privacy-utility trade-off. We demonstrate experimentally that our approach produces higher-fidelity samples compared to prior work, allowing to (1) detect more subtle data errors and biases, and (2) reduce the need for real data labelling by achieving high accuracy when training directly on artificial samples
While generation of synthetic data under differential privacy (DP) has received a lot of attention i...
With the rapid advancements in machine learning, the health care paradigm is shifting from treatment...
Machine Learning (ML) is accelerating progress across fields and industries, but relies on accessibl...
We consider the problem of enhancing user privacy in common data analysis and machine learning devel...
In this paper, we propose generating artificial data that retain statistical properties of real data...
Today we are surrounded by IOT devices that constantly generate different kinds of data about its en...
Today we are surrounded by IOT devices that constantly generate different kinds of data about its en...
The availability of large amounts of informative data is crucial for successful machine learning. Ho...
Advances in computation have created high demand for large datasets, which in turn has sparked inter...
Increasing interest in privacy-preserving machine learning has led to new and evolved approaches for...
Differentially private data generation techniques have become a promising solution to the data priva...
This paper describes PrivBayes, a differentially private method for generating synthetic datasets th...
Preserving the utility of published datasets while simultaneously providing provable privacy guarant...
Synthetic data has been advertised as a silver-bullet solution to privacy-preserving data publishing...
Preserving the utility of published datasets while simultaneously providing provable privacy guarant...
While generation of synthetic data under differential privacy (DP) has received a lot of attention i...
With the rapid advancements in machine learning, the health care paradigm is shifting from treatment...
Machine Learning (ML) is accelerating progress across fields and industries, but relies on accessibl...
We consider the problem of enhancing user privacy in common data analysis and machine learning devel...
In this paper, we propose generating artificial data that retain statistical properties of real data...
Today we are surrounded by IOT devices that constantly generate different kinds of data about its en...
Today we are surrounded by IOT devices that constantly generate different kinds of data about its en...
The availability of large amounts of informative data is crucial for successful machine learning. Ho...
Advances in computation have created high demand for large datasets, which in turn has sparked inter...
Increasing interest in privacy-preserving machine learning has led to new and evolved approaches for...
Differentially private data generation techniques have become a promising solution to the data priva...
This paper describes PrivBayes, a differentially private method for generating synthetic datasets th...
Preserving the utility of published datasets while simultaneously providing provable privacy guarant...
Synthetic data has been advertised as a silver-bullet solution to privacy-preserving data publishing...
Preserving the utility of published datasets while simultaneously providing provable privacy guarant...
While generation of synthetic data under differential privacy (DP) has received a lot of attention i...
With the rapid advancements in machine learning, the health care paradigm is shifting from treatment...
Machine Learning (ML) is accelerating progress across fields and industries, but relies on accessibl...