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Optimizing Objective Functions from Trained ReLU Neural Networks via Sampling

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arxiv 2205.14189 v2 pith:56STNILH submitted 2022-05-27 math.OC cs.LGstat.ML

Optimizing Objective Functions from Trained ReLU Neural Networks via Sampling

classification math.OC cs.LGstat.ML
keywords algorithmsmethodsnetworksneuralrelusamplingalgorithminitial
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper introduces scalable, sampling-based algorithms that optimize trained neural networks with ReLU activations. We first propose an iterative algorithm that takes advantage of the piecewise linear structure of ReLU neural networks and reduces the initial mixed-integer optimization problem (MIP) into multiple easy-to-solve linear optimization problems (LPs) through sampling. Subsequently, we extend this approach by searching around the neighborhood of the LP solution computed at each iteration. This scheme allows us to devise a second, enhanced algorithm that reduces the initial MIP problem into smaller, easier-to-solve MIPs. We analytically show the convergence of the methods and we provide a sample complexity guarantee. We also validate the performance of our algorithms by comparing them against state-of-the-art MIP-based methods. Finally, we show computationally how the sampling algorithms can be used effectively to warm-start MIP-based methods.

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