IEEE Trans Neural Netw Learn Syst. 2017 Sep;28(9):2022-2034. doi: 10.1109/TNNLS.2016.2572310. Epub 2016 Jun 8.
Stability evaluation of a weight-update system of higher order neural units (HONUs) with polynomial aggregation of neural inputs (also known as classes of polynomial neural networks) for adaptation of both feedforward and recurrent HONUs by a gradient descent method is introduced. An essential core of the approach is based on the spectral radius of a weight-update system, and it allows stability monitoring and its maintenance at every adaptation step individually. Assuring the stability of the weight-update system (at every single adaptation step) naturally results in the adaptation stability of the whole neural architecture that adapts to the target data. As an aside, the used approach highlights the fact that the weight optimization of HONU is a linear problem, so the proposed approach can be generally extended to any neural architecture that is linear in its adaptable parameters.
本文介绍了一种用于前馈和递归高阶神经单元(HONU)自适应的基于梯度下降法的高阶神经单元(HONUs)的权重更新系统和具有神经输入多项式聚合的稳定性评估(也称为多项式神经网络类)。该方法的一个重要核心是基于权重更新系统的谱半径,它允许在每个自适应步骤中单独进行稳定性监测和维护。保证权重更新系统的稳定性(在每个自适应步骤中)自然会导致适应目标数据的整个神经结构的适应稳定性。此外,所使用的方法强调了 HONU 的权重优化是一个线性问题的事实,因此所提出的方法可以一般扩展到任何其可适应参数是线性的神经架构。