This paper is concerned with the stability analysis of the recurrent neural networks (RNNs) by means of the integral quadratic constraint (IQC) framework. The rectified linear unit (ReLU) is typically employed as the activation function of the RNN, and the ReLU has specific nonnegativity properties regarding its input and output signals. Therefore, it is effective if we can derive IQC-based stability conditions with multipliers taking care of such nonnegativity properties. However, such nonnegativity (linear) properties are hardly captured by the existing multipliers defined on the positive semidefinite cone. To get around this difficulty, we loosen the standard positive semidefinite cone to the copositive cone, and employ copositive multipliers to capture the nonnegativity properties. We show that, within the framework of the IQC, we can employ copositive multipliers (or their inner approximation) together with existing multipliers such as Zames-Falb multipliers and polytopic bounding multipliers, and this directly enables us to ensure that the introduction of the copositive multipliers leads to better (no more conservative) results. We finally illustrate the effectiveness of the IQC-based stability conditions with the copositive multipliers by numerical examples.
翻译:本文关注通过整体二次约束(IQC)框架对经常性神经网络(RNN)进行稳定分析的问题。 纠正线性单元(RELU)通常被用作RNN的激活功能, 而RELU在输入和输出信号方面具有特定的非增强性特性。 因此,如果我们能够利用基于IQC的乘数来得出基于该等非增强性特性的稳定条件,并配有照顾这种非增强性特性的乘数,那么它就有效了。 然而,在正半确定性锥体上界定的现有乘数几乎无法捕捉到这种非增强性(线性)特性。 为了克服这一困难,我们将标准的正半确定性半确定性圆锥体(ReLU)放松标准对共性锥体的半确定性锥体(ReLU)的激活功能,并使用共性乘数来捕捉非增强性特性。 因此,在IQ的框架内,我们可以使用共性乘数乘数(或其内部近)以及Zames-Falb的乘数和多位捆绑性乘数等现有乘数特性。 这直接使我们能够确保采用C的稳性数字结果最终显示I的稳性乘数结果。