Chen Huixiong, Ye Qi
School of Mathematical Sciences, South China Normal University, Guangzhou 510631, China
Neural Comput. 2023 Aug 7;35(9):1543-1565. doi: 10.1162/neco_a_01603.
In this letter, we use composite optimization algorithms to solve sigmoid networks. We equivalently transfer the sigmoid networks to a convex composite optimization and propose the composite optimization algorithms based on the linearized proximal algorithms and the alternating direction method of multipliers. Under the assumptions of the weak sharp minima and the regularity condition, the algorithm is guaranteed to converge to a globally optimal solution of the objective function even in the case of nonconvex and nonsmooth problems. Furthermore, the convergence results can be directly related to the amount of training data and provide a general guide for setting the size of sigmoid networks. Numerical experiments on Franke's function fitting and handwritten digit recognition show that the proposed algorithms perform satisfactorily and robustly.
在这封信中,我们使用复合优化算法来求解Sigmoid网络。我们将Sigmoid网络等效地转化为一个凸复合优化问题,并基于线性化近端算法和乘子交替方向法提出了复合优化算法。在弱尖锐极小值和正则性条件的假设下,即使在非凸和非光滑问题的情况下,该算法也能保证收敛到目标函数的全局最优解。此外,收敛结果可以直接与训练数据量相关,并为设置Sigmoid网络的大小提供一般指导。对Franke函数拟合和手写数字识别的数值实验表明,所提出的算法表现令人满意且稳健。