在离散域中使用GasNet模型

Carmen L. R. Santos, Celso R. Souza, P. D. Oliveira, P. Husbands
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引用次数: 0

摘要

文献中已经报道了一种神经网络模型——gasnet,它除了传统的电类型、单元之间的点对点通信之外,还使用可扩散化学调制器进行通信。在这里,我们评估了该模型在两种不同场景下的适用性,即异或问题和模拟食物收集任务。两者都代表了比GasNet最初引入时(本质上是连续的)更简单、更离散的领域,因此可以解决不同的问题;此外,这两个问题都是文献中众所周知的基准问题。这些实验旨在通过与传统体系结构的类比来更好地理解模型,并扩展原始问题域,将其性能与之前提出的一些模型进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using the GasNet model in discrete domains
A neural network model-the GasNet-has been reported in the literature, which, in addition to the traditional electric type, point-to-point communication between units, also uses communication through a diffusable chemical modulator. Here we assess the applicability of this model in two different scenarios, the XOR problem and a simulated food gathering task. Both represent simpler and more discrete domains than the one in which GasNet was originally introduced (which had an essentially continuous nature), thus allowing for distinct issues to be addressed; also, both are well-known benchmark problems from the literature. The experiments were intended to better understand the model from analogies with traditional architectures as well as to extend the original problem domain, comparing its performance with some of the ones previously presented.
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