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Multistrategy Self-Organizing Map Learning for Classification Problems

机译:分类策略的多策略自组织图学习

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摘要

Multistrategy Learning of Self-Organizing Map (SOM) and Particle Swarm Optimization (PSO) is commonly implemented in clustering domain due to its capabilities in handling complex data characteristics. However, some of these multistrategy learning architectures have weaknesses such as slow convergence time always being trapped in the local minima. This paper proposes multistrategy learning of SOM lattice structure with Particle Swarm Optimisation which is called ESOMPSO for solving various classification problems. The enhancement of SOM lattice structure is implemented by introducing a new hexagon formulation for better mapping quality in data classification and labeling. The weights of the enhanced SOM are optimised using PSO to obtain better output quality. The proposed method has been tested on various standard datasets with substantial comparisons with existing SOM network and various distance measurement. The results show that our proposed method yields a promising result with better average accuracy and quantisation errors compared to the other methods as well as convincing significant test.
机译:自组织图(SOM)和粒子群优化(PSO)的多策略学习通常在聚类领域中实现,因为它具有处理复杂数据特征的能力。但是,这些多策略学习体系结构中的某些体系结构有一些缺点,例如收敛速度慢,总是被局限在局部最小值中。为了解决各种分类问题,本文提出了利用粒子群算法对SOM晶格结构进行多策略学习。通过引入新的六边形公式来实现SOM晶格结构的增强,以便在数据分类和标记中获得更好的映射质量。使用PSO优化了增强型SOM的权重,以获得更好的输出质量。所提出的方法已经在各种标准数据集上进行了测试,并与现有SOM网络和各种距离测量进行了实质性比较。结果表明,与其他方法相比,我们提出的方法具有更好的平均准确度和量化误差,并且具有令人信服的显着测试效果,结果令人满意。

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