This paper proposes a new approach for privacy-preserving and verifiable convolutional neural network (CNN) testing, enabling a CNN model developer to convince a user of the truthful CNN performance over non-public data from multiple testers, while respecting model privacy. To balance the security and efficiency issues, three new efforts are done by appropriately integrating homomorphic encryption (HE) and zero-knowledge succinct non-interactive argument of knowledge (zk-SNARK) primitives with the CNN testing. First, a CNN model to be tested is strategically partitioned into a private part kept locally by the model developer, and a public part outsourced to an outside server. Then, the private part runs over HE-protected test data sent by a...
Reliable neural networks (NNs) provide important inference-time reliability guarantees such as fairn...
Outsourced inference service has enormously promoted the popularity of deep learning, and helped use...
Machine learning has become a highly utilized technology to perform decision making on high dimensio...
The process of image classification using convolutional neural networks (CNNs) often relies on acces...
The processing of sensitive user data using deep learning models is an area that has gained recent t...
With the development of AI systems, services using them expand to various applications. The widespre...
A front-runner in modern technological advancement, machine learning relies heavily on the use of pe...
In recent years, deep learning has become an increasingly popular approach to modelling data, due to...
Profiled side-channel analysis based on deep learning, and more precisely Convolutional Neural Netwo...
Machine learning has assumed an increasingly important role in Artificial Intelligence in recent yea...
Profiled side-channel analysis based on deep learning, and more precisely Convolutional Neural Netwo...
International audienceProfiled side-channel analysis based on deep learning, and more precisely Conv...
Text classifiers are regularly applied to personal texts, leaving users of these classifiers vulnera...
Convolutional neural networks have gained vast popularity due to their excellent performance in the ...
Neural Networks (NN) provide a powerful method for machine learning training and inference. To effec...
Reliable neural networks (NNs) provide important inference-time reliability guarantees such as fairn...
Outsourced inference service has enormously promoted the popularity of deep learning, and helped use...
Machine learning has become a highly utilized technology to perform decision making on high dimensio...
The process of image classification using convolutional neural networks (CNNs) often relies on acces...
The processing of sensitive user data using deep learning models is an area that has gained recent t...
With the development of AI systems, services using them expand to various applications. The widespre...
A front-runner in modern technological advancement, machine learning relies heavily on the use of pe...
In recent years, deep learning has become an increasingly popular approach to modelling data, due to...
Profiled side-channel analysis based on deep learning, and more precisely Convolutional Neural Netwo...
Machine learning has assumed an increasingly important role in Artificial Intelligence in recent yea...
Profiled side-channel analysis based on deep learning, and more precisely Convolutional Neural Netwo...
International audienceProfiled side-channel analysis based on deep learning, and more precisely Conv...
Text classifiers are regularly applied to personal texts, leaving users of these classifiers vulnera...
Convolutional neural networks have gained vast popularity due to their excellent performance in the ...
Neural Networks (NN) provide a powerful method for machine learning training and inference. To effec...
Reliable neural networks (NNs) provide important inference-time reliability guarantees such as fairn...
Outsourced inference service has enormously promoted the popularity of deep learning, and helped use...
Machine learning has become a highly utilized technology to perform decision making on high dimensio...