在河内塔学习法律动作的联系主义方法

A. Sohn, J. Gaudiot
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引用次数: 1

摘要

虽然优化调度问题(如旅行推销员问题)在神经网络中是常见的实践,但在神经网络中解决河内塔(TOH)等规划问题一直是困难的。本文从神经网络的角度分析了调度问题与规划问题的区别,并在此基础上提出了一种用学习来解决规划问题的方法。特别地,选择TOH作为目标问题,并将其表示为神经元数组。从TOH派生的一组约束是基于这种表示形式制定的。该系统旨在学习如何产生合法的招式。学习合法的动作是通过产生非法的状态和衡量状态的合法性来完成的。仿真结果表明,系统的运动方向是学习到TOH的合法走法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A connectionist approach to learning legal moves in Tower-of-Hanoi
While optimizing scheduling problems such as the traveling salesman problem has been common practice in neural networks, solving planning problems such as the Tower-of-Hanoi (TOH) has been difficult in neural networks. The differences between the scheduling and planning problems are identified here from the neural network perspective, based on which an approach to solve planning problems with learning is proposed. In particular, the TOH is chosen as the target problem and represented as an array of neurons. A set of constraints derived from the TOH is formulated based on this representation. The system is designed to learn to generate legal moves. Learning legal moves is accomplished by generating illegal states and by measuring the legality of the states. Simulation results show that the system moves in a direction in which it learns legal moves for the TOH.<>
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