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Multistability and instability of neural networks with non-monotonic piecewise linear activation functions

机译:非单调分段线性激活功能的神经网络的多功率和不稳定性

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In this paper, we discuss the coexistence and dynamical behaviors of multiple equilibrium points for neural networks with a class of non-monotonic piecewise linear activation functions. It is proven that under some conditions, such n-neuron neural networks have exactly 5 equilibrium points, 3 of which are locally stable and the others are unstable, based on the fixed point theorem, the contraction mapping theorem and the eigenvalue properties of strict diagonal dominance matrix. The investigation shows that the neural networks with non-monotonic piecewise linear activation functions introduced in this paper can have greater storage capacity than the ones with Mexican-hat-type activation function. A simulation example is provided to illustrate and validate the theoretical findings.
机译:在本文中,我们讨论了一类非单调分段线性激活功能的神经网络多重均衡点的共存和动态行为。据证明,在某些条件下,这种n-neuron神经网络具有完全是5个平衡点,其中3个是局部稳定的,并且基于固定点定理,收缩映射定理和严格对角线的特征值特性,其他情况是不稳定的优势矩阵。该研究表明,本文引入的非单调分段线性激活功能的神经网络可以具有比具有墨西哥帽型激活功能更大的存储容量。提供模拟示例以说明和验证理论发现。

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