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Formal Verification of Piece-Wise Linear Feed-Forward Neural Networks

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abstract

We present an approach for the verification of feed-forward neural networks in which all nodes have a piece-wise linear activation function. Such networks are often used in deep learning and have been shown to be hard to verify for modern satisfiability modulo theory (SMT) and integer linear programming (ILP) solvers. The starting point of our approach is the addition of a global linear approximation of the overall network behavior to the verification problem that helps with SMT-like reasoning over the network behavior. We present a specialized verification algorithm that employs this approximation in a search process in which it infers additional node phases for the non-linear nodes in the network from partial node phase assignments, similar to unit propagation in classical SAT solving. We also show how to infer additional conflict clauses and safe node fixtures from the results of the analysis steps performed during the search. The resulting approach is evaluated on collision avoidance and handwritten digit recognition case studies.

fields

cs.LG 1

years

2019 1

verdicts

UNVERDICTED 1

representative citing papers

Verifying Robustness of Gradient Boosted Models

cs.LG · 2019-06-26 · unverdicted · novelty 7.0

VeriGB encodes gradient boosted models as SMT formulas to enable verification of their robustness to input perturbations using off-the-shelf solvers.

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  • Verifying Robustness of Gradient Boosted Models cs.LG · 2019-06-26 · unverdicted · none · ref 9 · internal anchor

    VeriGB encodes gradient boosted models as SMT formulas to enable verification of their robustness to input perturbations using off-the-shelf solvers.