Neural networks are powerful tools for automated decision-making, with applications ranging from image recogni-tion to hiring decisions and safety-critical autonomous driving. However, due to their black-box nature and large scale, reasoning about their behavior is challenging. Statistical analysis is oftenused to infer probabilistic properties of a network, such as its robustness to noise and inaccurate inputs or the fairness of its decisions. While scalable, statistical methods can only provide probabilistic guarantees on the quality of their results and may underestimate the impact of low probability inputs leading to undesired behavior of the network.In this paper, we investigate the use of symbolic analysis and constraint solution spac...
The long line of research in probabilistic model checking has resulted in efficient symbolic verific...
We propose a symbolic execution method for programs that can draw random samples. In contrast to exi...
When using deep neural networks to operate safety-critical systems, assessing the sensitivity of the...
Recently we have proposed symbolic execution techniques for the probabilistic analysis of programs. ...
Neural-symbolic systems combine the strengths of neural networks and symbolic formalisms. In this pa...
Neural networks have shown immense promise in solving a variety of challenging problems including co...
We present a new approach to assessing the robustness of neural networks based on estimating the pro...
In a world in which we increasingly rely on safety critical systems that simultaneously are becoming...
AbstractThis paper investigates methods that balance time and space constraints against the quality ...
Probabilistic software analysis seeks to quantify the likelihood of reaching a target event under un...
In this thesis, we present efficient implementation techniques for probabilistic model checking, a m...
Probabilistic software analysis aims at quantifying the probability of a target event occurring duri...
The long line of research in probabilistic model checking has resulted in efficient symbolic verific...
IEEE Neural networks (NNs) are now routinely implemented on systems that must operate in uncertain e...
Symbolic execution has been applied, among others, to check programs against contract specifications...
The long line of research in probabilistic model checking has resulted in efficient symbolic verific...
We propose a symbolic execution method for programs that can draw random samples. In contrast to exi...
When using deep neural networks to operate safety-critical systems, assessing the sensitivity of the...
Recently we have proposed symbolic execution techniques for the probabilistic analysis of programs. ...
Neural-symbolic systems combine the strengths of neural networks and symbolic formalisms. In this pa...
Neural networks have shown immense promise in solving a variety of challenging problems including co...
We present a new approach to assessing the robustness of neural networks based on estimating the pro...
In a world in which we increasingly rely on safety critical systems that simultaneously are becoming...
AbstractThis paper investigates methods that balance time and space constraints against the quality ...
Probabilistic software analysis seeks to quantify the likelihood of reaching a target event under un...
In this thesis, we present efficient implementation techniques for probabilistic model checking, a m...
Probabilistic software analysis aims at quantifying the probability of a target event occurring duri...
The long line of research in probabilistic model checking has resulted in efficient symbolic verific...
IEEE Neural networks (NNs) are now routinely implemented on systems that must operate in uncertain e...
Symbolic execution has been applied, among others, to check programs against contract specifications...
The long line of research in probabilistic model checking has resulted in efficient symbolic verific...
We propose a symbolic execution method for programs that can draw random samples. In contrast to exi...
When using deep neural networks to operate safety-critical systems, assessing the sensitivity of the...