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        <dc:title>On the verification of neural ODEs with stochastic guarantees</dc:title>
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        <bibo:abstract>We show that Neural ODEs, an emerging class of timecontinuous 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 optimizations, we introduce a novel forward-mode adjoint sensitivity method to compute gradients without the need for backpropagation. Finally, we establish asymptotic and non-asymptotic convergence rates for SLR.</bibo:abstract>
        <bibo:volume>35</bibo:volume>
        <bibo:issue>13</bibo:issue>
        <bibo:startPage>11525-11535</bibo:startPage>
        <bibo:endPage>11525-11535</bibo:endPage>
        <dc:publisher>AAAI Press</dc:publisher>
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