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On the approximation of rough functions with deep neural networks

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arxiv 1912.06732 v2 pith:DQLDGWFA submitted 2019-12-13 math.NA cs.LGcs.NAstat.ML

On the approximation of rough functions with deep neural networks

classification math.NA cs.LGcs.NAstat.ML
keywords neuraldeepnetworksapproximatingfunctionsprocedureroughaccuracy
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Deep neural networks and the ENO procedure are both efficient frameworks for approximating rough functions. We prove that at any order, the ENO interpolation procedure can be cast as a deep ReLU neural network. This surprising fact enables the transfer of several desirable properties of the ENO procedure to deep neural networks, including its high-order accuracy at approximating Lipschitz functions. Numerical tests for the resulting neural networks show excellent performance for approximating solutions of nonlinear conservation laws and at data compression.

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