POLICE: Provably Optimal Linear Constraint Enforcement for Deep Neural Networks

CoRR(2023)

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摘要
Deep Neural Networks (DNNs) outshine alternative function approximators in many settings thanks to their modularity in composing any desired differentiable operator. The formed parametrized functional is then tuned to solve a task at hand from simple gradient descent. This modularity comes at the cost of making strict enforcement of constraints on DNNs, e.g. from a priori knowledge of the task, or from desired physical properties, an open challenge. In this paper we propose the first provable affine constraint enforcement method for DNNs that only requires minimal changes into a given DNN's forward-pass, that is computationally friendly, and that leaves the optimization of the DNN's parameter to be unconstrained, i.e. standard gradient-based method can be employed. Our method does not require any sampling and provably ensures that the DNN fulfills the affine constraint on a given input space's region at any point during training, and testing. We coin this method POLICE, standing for Provably Optimal LInear Constraint Enforcement. Github: https://github.com/RandallBalestriero/POLICE
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关键词
alternative function approximators,deep Neural Networks,Deep Neural Networks,desired differentiable operator,desired physical properties,DNNs,given DNN's forward-pass,method POLICE,provable affine constraint enforcement method,Provably Optimal linear Constraint Enforcement,Provably Optimal LInear Constraint Enforcement,simple gradient descent,standard gradient-based method
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