具有演化运算的汇编程序编码

T. Praczyk
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引用次数: 3

摘要

汇编编码是一种神经进化方法,它将神经网络以线性程序的形式表示出来。该程序由操作和数据组成,其目标是生成包含构建网络所需的所有信息的矩阵。为了使程序产生有效的网络,使用了进化技术。遗传算法确定程序中操作和数据的排列以及操作的参数。操作的实现不会发展,它们是由设计人员预先定义的。由于使用预定义实现的操作可以将汇编器编码的适用性缩小到有限的一类问题,因此通过应用可进化的操作对该方法进行了修改。为了验证新方法的有效性,对捕食者-猎物问题进行了实验。在实验中,神经网络的任务是控制一组水下载具捕食者,它们的共同目标是捕获水下载具猎物,它们的行为遵循一种简单的确定性策略。本文介绍了改进的方法,并报道了实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assembler Encoding with Evolvable Operations
Assembler Encoding is a neuro-evolutionary method which represents a neural network in the form of a linear program. The program consists of operations and data and its goal is to produce a matrix including all the information necessary to construct a network. In order for the programs to produce effective networks, evolutionary techniques are used. A genetic algorithm determines an arrangement of the operations and data in the program and parameters of the operations. Implementations of the operations do not evolve, they are defined in advance by a designer. Since operations with predefined implementations could narrow down applicability of Assembler Encoding to a restricted class of problems, the method has been modified by applying evolvable operations. To verify effectiveness of the new method, experiments on the predator-prey problem were carried out. In the experiments, the task of neural networks was to control a team of underwater-vehicles-predators whose common goal was to capture an underwater-vehicle-prey behaving by a simple deterministic strategy. The paper describes the modified method and reports the experiments.
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