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Stability and Performance Analysis of Discrete-Time ReLU Recurrent Neural Networks

8 May 2024
Sahel Vahedi Noori
Bin Hu
Geir Dullerud
Peter M. Seiler
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Abstract

This paper presents sufficient conditions for the stability and ℓ2\ell_2ℓ2​-gain performance of recurrent neural networks (RNNs) with ReLU activation functions. These conditions are derived by combining Lyapunov/dissipativity theory with Quadratic Constraints (QCs) satisfied by repeated ReLUs. We write a general class of QCs for repeated RELUs using known properties for the scalar ReLU. Our stability and performance condition uses these QCs along with a "lifted" representation for the ReLU RNN. We show that the positive homogeneity property satisfied by a scalar ReLU does not expand the class of QCs for the repeated ReLU. We present examples to demonstrate the stability / performance condition and study the effect of the lifting horizon.

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