We show that Neural ODEs, an emerging class of time-continuous neural networks, can be verified by solving a set of global-optimization problems. For this purpose, we introduce Stochastic Lagrangian Reachability (SLR), an abstraction-based technique for constructing a tight Reachtube (an over-approximation of the set of reachable states over a given time-horizon), and provide stochastic guarantees in the form of confidence intervals for the Reachtube bounds. SLR inherently avoids the infamous wrapping effect (accumulation of over-approximation errors) by performing local optimization steps to expand safe regions instead of repeatedly forward-propagating them as is done by deterministic reachability methods. To enable fast local optimization...
We study the problem of learning controllers for discrete-time non-linear stochastic dynamical syste...
We study the problem of learning controllers for discrete-time non-linear stochastic dynamical syste...
We consider the problem of formally verifying almost-sure (a.s.) asymptotic stability in discrete-ti...
We show that Neural ODEs, an emerging class of timecontinuous neural networks, can be verified by so...
We study the overparametrization bounds required for the global convergence of stochastic gradient d...
Providing non-trivial certificates of safety for non-linear stochastic systems is an important open ...
A fundamental component of neural network verification is the computation of bounds on the values th...
Verifying correctness of deep neural networks (DNNs) is challenging. We study a generic reachability...
Verifying correctness of deep neural networks (DNNs) is challenging. We study a generic reachability...
This paper studies the problem of forecasting general stochastic processes using an extension of the...
Existing global convergence guarantees of (stochastic) gradient descent do not apply to practical de...
We investigate the complexity of the reachability problem for (deep) neuralnetworks: does it compute...
Stochastic partial differential equations (SPDEs) are the mathematical tool of choice for modelling ...
Machine learning models and in particular Deep Neural Networks are being deployed in an ever increas...
The deep learning optimization community has observed how the neural networks generalization ability...
We study the problem of learning controllers for discrete-time non-linear stochastic dynamical syste...
We study the problem of learning controllers for discrete-time non-linear stochastic dynamical syste...
We consider the problem of formally verifying almost-sure (a.s.) asymptotic stability in discrete-ti...
We show that Neural ODEs, an emerging class of timecontinuous neural networks, can be verified by so...
We study the overparametrization bounds required for the global convergence of stochastic gradient d...
Providing non-trivial certificates of safety for non-linear stochastic systems is an important open ...
A fundamental component of neural network verification is the computation of bounds on the values th...
Verifying correctness of deep neural networks (DNNs) is challenging. We study a generic reachability...
Verifying correctness of deep neural networks (DNNs) is challenging. We study a generic reachability...
This paper studies the problem of forecasting general stochastic processes using an extension of the...
Existing global convergence guarantees of (stochastic) gradient descent do not apply to practical de...
We investigate the complexity of the reachability problem for (deep) neuralnetworks: does it compute...
Stochastic partial differential equations (SPDEs) are the mathematical tool of choice for modelling ...
Machine learning models and in particular Deep Neural Networks are being deployed in an ever increas...
The deep learning optimization community has observed how the neural networks generalization ability...
We study the problem of learning controllers for discrete-time non-linear stochastic dynamical syste...
We study the problem of learning controllers for discrete-time non-linear stochastic dynamical syste...
We consider the problem of formally verifying almost-sure (a.s.) asymptotic stability in discrete-ti...