Existing neural network verifiers compute a proof that each input is handled correctly under a given perturbation by propagating a symbolic abstraction of reachable values at each layer. This process is repeated from scratch independently for each input (e.g., image) and perturbation (e.g., rotation), leading to an expensive overall proof effort when handling an entire dataset. In this work, we introduce a new method for reducing this verification cost without losing precision based on a key insight that abstractions obtained at intermediate layers for different inputs and perturbations can overlap or contain each other. Leveraging our insight, we introduce the general concept of shared certificates, enabling proof effort reuse across multi...
The success of Deep Learning and its potential use in many safety-critical applications has motivate...
Deep neural networks have achieved great success on many tasks and even surpass human performance in...
Neural Networks (NNs) are popular machine learning models which have found successful application in...
Machine learning models and in particular Deep Neural Networks are being deployed in an ever increas...
Verifying robustness of neural networks given a specified threat model is a fundamental yet challeng...
Complete verification of deep neural networks (DNNs) can exactly determine whether the DNN satisfies...
We present a novel method for scalable and precise certification of deep neural networks. The key te...
The success of Deep Learning and its potential use in many safety-critical applications has motivate...
As neural networks are increasingly being integrated into mission-critical systems, it is becoming c...
A key problem in the adoption of artificial neural networks in safety- related applications is that ...
Formal verification of neural networks is critical for their safe adoption in real-world application...
Our research introduces a unique blockchain network that verifies the integrity of extensively train...
It has increasingly been recognised that verification can contribute to the validation and debugging...
The increasing use of machine learning algorithms to deal with large amount of data and the expertis...
Deep neural networks have achieved impressive experimental results in image classification, but can ...
The success of Deep Learning and its potential use in many safety-critical applications has motivate...
Deep neural networks have achieved great success on many tasks and even surpass human performance in...
Neural Networks (NNs) are popular machine learning models which have found successful application in...
Machine learning models and in particular Deep Neural Networks are being deployed in an ever increas...
Verifying robustness of neural networks given a specified threat model is a fundamental yet challeng...
Complete verification of deep neural networks (DNNs) can exactly determine whether the DNN satisfies...
We present a novel method for scalable and precise certification of deep neural networks. The key te...
The success of Deep Learning and its potential use in many safety-critical applications has motivate...
As neural networks are increasingly being integrated into mission-critical systems, it is becoming c...
A key problem in the adoption of artificial neural networks in safety- related applications is that ...
Formal verification of neural networks is critical for their safe adoption in real-world application...
Our research introduces a unique blockchain network that verifies the integrity of extensively train...
It has increasingly been recognised that verification can contribute to the validation and debugging...
The increasing use of machine learning algorithms to deal with large amount of data and the expertis...
Deep neural networks have achieved impressive experimental results in image classification, but can ...
The success of Deep Learning and its potential use in many safety-critical applications has motivate...
Deep neural networks have achieved great success on many tasks and even surpass human performance in...
Neural Networks (NNs) are popular machine learning models which have found successful application in...