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Clustering with unsupervised learning neural networks: a comparative study

机译:无监督学习神经网络的聚类:比较研究

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Abstract: A benchmark study of two self-organizing artificial neural network models, ART2 and DIGNET, is conducted. The architecture differences and learning procedures between these two models are compared. The performance of ART2 and DIGNET on data clustering and pattern recognition problems with noise or interference is investigated by computer simulations. It is shown that DIGNET generally has faster learning and better clustering performance on the statistical pattern recognition problems. DIGNET has a simpler architecture, and the system parameters can be analytically determined from the self-organizing process. The threshold value used in DIGNET can be specifically determined from a given lower bound on the desirable signal-to-noise ratio (SNR). A modified model based on the features of ART2 and DIGNET is also derived and investigated. The simpler architecture combines the ART2 structure with the advantages of DIGNET model. The concepts of well depth and stage age originally introduced in DIGNET are applied in the modified model. The modified model preserves the features of noise suppression, contrast enhancement and self-organizing stable pattern recognition of ART2, yet provides a specific method to adjust parameters in the network. The network performs a variant of K-means learning, but without the knowledge of a priori information on the actual number of clusters. The networks discussed in this paper are applied and benchmarked against clustering and pattern recognition problems. Comparative simulation results of the networks are also presented.!14
机译:摘要:进行了两个自组织人工神经网络模型ART2和DIGNET的基准研究。比较了这两个模型之间的体系结构差异和学习过程。通过计算机仿真研究了ART2和DIGNET在数据聚类和带有噪声或干扰的模式识别问题上的性能。结果表明,对于统计模式识别问题,DIGNET通常具有更快的学习速度和更好的聚类性能。 DIGNET具有更简单的体系结构,并且可以通过自组织过程来分析确定系统参数。 DIGNET中使用的阈值可以根据所需信噪比(SNR)的给定下限具体确定。还推导并研究了基于ART2和DIGNET特征的改进模型。更简单的架构将ART2结构与DIGNET模型的优势结合在一起。最初在DIGNET中引入的井深和井龄概念在修改后的模型中得到了应用。改进后的模型保留了ART2的噪声抑制,对比度增强和自组织稳定模式识别等功能,但提供了一种调整网络参数的特定方法。该网络执行K均值学习的一种变体,但不了解有关实际簇数的先验信息。本文讨论的网络已针对聚类和模式识别问题进行了应用和基准测试。还给出了网络的比较仿真结果。14

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