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Performance Optimization of Adaptive Resonance Neural Networks Using Genetic Algorithms

机译:基于遗传算法的自适应共振神经网络性能优化

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We present a hybrid clustering system that is based on the adaptive resonance theory 1 (ART1) artificial neural network (ANN) with a genetic algorithm (GA) optimizer, to improve the ART1 ANN settings. As a case study, we will consider text clustering. The core of our experiments will be the quality of clustering, multi-dimensional domain space of ART1 design parameters has many possible combinations of values that yield high clustering quality. These design parameters are hard to estimate manually. We proposed GA to find some of these sets. Results show better clustering and simpler quality estimator when compared with the existing techniques. We call this algorithm genetically engineered parameters ART1 or ARTgep
机译:我们提出了一种基于遗传算法(GA)优化器的基于自适应共振理论1(ART1)人工神经网络(ANN)的混合聚类系统,以改善ART1 ANN设置。作为案例研究,我们将考虑文本聚类。我们实验的核心将是聚类的质量,ART1设计参数的多维域空间具有许多可能产生高聚类质量的值组合。这些设计参数很难手动估算。我们建议使用GA来找到其中一些集合。与现有技术相比,结果显示了更好的聚类和更简单的质量估算器。我们将此算法称为基因工程参数ART1或ARTgep

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