Park J, Park Y
Department of Control and Instrumentation Engineering, Korea University, Chochiwon, Chungnam.
Neural Comput. 2000 Jun;12(6):1449-62. doi: 10.1162/089976600300015457.
This article is concerned with the synthesis of the optimally performing GBSB (generalized brain-state-in-a-box) neural associative memory given a set of desired binary patterns to be stored as asymptotically stable equilibrium points. Based on some known qualitative properties and newly observed fundamental properties of the GBSB model, the synthesis problem is formulated as a constrained optimization problem. Next, we convert this problem into a quasi-convex optimization problem called GEVP (generalized eigenvalue problem). This conversion is particularly useful in practice, because GEVPs can be efficiently solved by recently developed interior point methods. Design examples are given to illustrate the proposed approach and to compare with existing synthesis methods.
本文关注的是,在给定一组期望的二进制模式作为渐近稳定平衡点进行存储的情况下,合成性能最优的广义盒中脑状态(GBSB)神经联想记忆。基于GBSB模型的一些已知定性特性和新观察到的基本特性,将合成问题表述为一个约束优化问题。接下来,我们将此问题转化为一个称为广义特征值问题(GEVP)的拟凸优化问题。这种转化在实际中特别有用,因为GEVPs可以通过最近开发的内点法有效地求解。给出了设计示例来说明所提出的方法,并与现有的合成方法进行比较。