A key promise of machine learning is the ability to assist users with personal tasks. Because the personal context required to make accurate predictions is often sensitive, we require systems that protect privacy. A gold standard privacy-preserving system will satisfy perfect secrecy, meaning that interactions with the system provably reveal no additional private information to adversaries. This guarantee should hold even as we perform multiple personal tasks over the same underlying data. However, privacy and quality appear to be in tension in existing systems for personal tasks. Neural models typically require lots of training to perform well, while individual users typically hold a limited scale of data, so the systems propose to learn f...
Recent years have witnessed a rapid development in machine learning systems and a widespread increas...
A membership inference attack (MIA) poses privacy risks for the training data of a machine learning ...
Federated learning (FL) has attracted growing interest for enabling privacy-preserving machine learn...
Large machine learning models, or so-called foundation models, aim to serve as base-models for appli...
Machine learning has assumed an increasingly important role in Artificial Intelligence in recent yea...
Applying machine learning (ML) to sensitive domains requires privacy protection of the underlying tr...
Data is coined to be the new oil due to the increasing awareness of its value in a myriad of applica...
The explosion of data collection and advances in artificial intelligence and machine learning have m...
Data holders are increasingly seeking to protect their user’s privacy, whilst still maximizing their...
Advancements in Deep Learning (DL) have enabled leveraging large-scale datasets to train models that...
The processing of sensitive user data using deep learning models is an area that has gained recent t...
Distributed deep learning has potential for significant impact in preserving data privacy and improv...
Preserving privacy in contemporary NLP models allows us to work with sensitive data, but unfortunate...
Does a neural network's privacy have to be at odds with its accuracy? In this work, we study the eff...
A surprising phenomenon in modern machine learning is the ability of a highly overparameterized mode...
Recent years have witnessed a rapid development in machine learning systems and a widespread increas...
A membership inference attack (MIA) poses privacy risks for the training data of a machine learning ...
Federated learning (FL) has attracted growing interest for enabling privacy-preserving machine learn...
Large machine learning models, or so-called foundation models, aim to serve as base-models for appli...
Machine learning has assumed an increasingly important role in Artificial Intelligence in recent yea...
Applying machine learning (ML) to sensitive domains requires privacy protection of the underlying tr...
Data is coined to be the new oil due to the increasing awareness of its value in a myriad of applica...
The explosion of data collection and advances in artificial intelligence and machine learning have m...
Data holders are increasingly seeking to protect their user’s privacy, whilst still maximizing their...
Advancements in Deep Learning (DL) have enabled leveraging large-scale datasets to train models that...
The processing of sensitive user data using deep learning models is an area that has gained recent t...
Distributed deep learning has potential for significant impact in preserving data privacy and improv...
Preserving privacy in contemporary NLP models allows us to work with sensitive data, but unfortunate...
Does a neural network's privacy have to be at odds with its accuracy? In this work, we study the eff...
A surprising phenomenon in modern machine learning is the ability of a highly overparameterized mode...
Recent years have witnessed a rapid development in machine learning systems and a widespread increas...
A membership inference attack (MIA) poses privacy risks for the training data of a machine learning ...
Federated learning (FL) has attracted growing interest for enabling privacy-preserving machine learn...