Battiti R, Tecchiolli G
Dipartimento di Matematica, Trento Univ.
IEEE Trans Neural Netw. 1995;6(5):1185-200. doi: 10.1109/72.410361.
In this paper the task of training subsymbolic systems is considered as a combinatorial optimization problem and solved with the heuristic scheme of the reactive tabu search (RTS). An iterative optimization process based on a "modified local search" component is complemented with a meta-strategy to realize a discrete dynamical system that discourages limit cycles and the confinement of the search trajectory in a limited portion of the search space. The possible cycles are discouraged by prohibiting (i.e., making tabu) the execution of moves that reverse the ones applied in the most recent part of the search. The prohibition period is adapted in an automated way. The confinement is avoided and a proper exploration is obtained by activating a diversification strategy when too many configurations are repeated excessively often. The RTS method is applicable to nondifferentiable functions, is robust with respect to the random initialization, and effective in continuing the search after local minima. Three tests of the technique on feedforward and feedback systems are presented.
在本文中,训练亚符号系统的任务被视为一个组合优化问题,并通过反应式禁忌搜索(RTS)的启发式方案来解决。基于“改进局部搜索”组件的迭代优化过程辅以一种元策略,以实现一个离散动力系统,该系统可抑制极限环以及将搜索轨迹限制在搜索空间的有限部分。通过禁止(即设置为禁忌)执行与搜索最近阶段所应用的移动相反的移动,来抑制可能的循环。禁止期以自动化方式进行调整。当过多配置被频繁重复时,通过激活多样化策略来避免搜索轨迹的限制并实现适当的探索。RTS方法适用于不可微函数,对随机初始化具有鲁棒性,并且在局部最小值之后继续搜索时有效。给出了该技术在前馈和反馈系统上的三项测试。