The advent of more powerful cloud compute over the past decade has made it possible to train the deep neural networks used today for applications in almost everything we do. However, the amount of existing data for private datasets, such as hospital records, remain scarce and will probably remain scarce for the foreseeable future. Without high-quality data, neural networks will not be able to perform high-quality inference. To aid in training models when existing information is limited, we aim to train existing deep neural network architectures to generate synthetic text that is similar to the text it was trained on without memorizing one-to-one mappings or leaking any sensitive data. To achieve this goal, we fine-tune our models to adhe...
A shorter version of this paper appeared at the 17th IEEE Internationa lConference on Data Mining (I...
Machine Learning (ML) has achieved enormous success in solving a variety of problems in computer vis...
The processing of sensitive user data using deep learning models is an area that has gained recent t...
In this paper, we propose generating artificial data that retain statistical properties of real data...
Hierarchical text classification consists of classifying text documents into a hierarchy of classes ...
The growing development of artificial intelligence (AI), particularly neural networks, is transformi...
International audienceThis article deals with adversarial attacks towards deep learning systems for ...
This article provides a comprehensive synthesis of the recent developments in synthetic data generat...
In today's world, the protection of privacy is increasingly gaining attention, not only among the ge...
Machine Learning (ML) is accelerating progress across fields and industries, but relies on accessibl...
Neural networks have become tremendously successful in recent times due to larger computing power a...
We study a pitfall in the typical workflow for differentially private machine learning. The use of d...
Training even moderately-sized generative models with differentially-private stochastic gradient des...
Differentially private data generation techniques have become a promising solution to the data priva...
International audienceThis position paper deals with privacy for deep neural networks, more precisel...
A shorter version of this paper appeared at the 17th IEEE Internationa lConference on Data Mining (I...
Machine Learning (ML) has achieved enormous success in solving a variety of problems in computer vis...
The processing of sensitive user data using deep learning models is an area that has gained recent t...
In this paper, we propose generating artificial data that retain statistical properties of real data...
Hierarchical text classification consists of classifying text documents into a hierarchy of classes ...
The growing development of artificial intelligence (AI), particularly neural networks, is transformi...
International audienceThis article deals with adversarial attacks towards deep learning systems for ...
This article provides a comprehensive synthesis of the recent developments in synthetic data generat...
In today's world, the protection of privacy is increasingly gaining attention, not only among the ge...
Machine Learning (ML) is accelerating progress across fields and industries, but relies on accessibl...
Neural networks have become tremendously successful in recent times due to larger computing power a...
We study a pitfall in the typical workflow for differentially private machine learning. The use of d...
Training even moderately-sized generative models with differentially-private stochastic gradient des...
Differentially private data generation techniques have become a promising solution to the data priva...
International audienceThis position paper deals with privacy for deep neural networks, more precisel...
A shorter version of this paper appeared at the 17th IEEE Internationa lConference on Data Mining (I...
Machine Learning (ML) has achieved enormous success in solving a variety of problems in computer vis...
The processing of sensitive user data using deep learning models is an area that has gained recent t...