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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >High-resolution Self-Organizing Maps for advanced visualization and dimension reduction
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High-resolution Self-Organizing Maps for advanced visualization and dimension reduction

机译:高分辨率自组织地图,用于高级可视化和尺寸减少

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摘要

Kohonen’s Self Organizing feature Map (SOM) provides an effective way to project high dimensional input features onto a low dimensional display space while preserving the topological relationships among the input features. Recent advances in algorithms that take advantages of modern computing hardware introduced the concept of high resolution SOMs (HRSOMs). This paper investigates the capabilities and applicability of the HRSOM as a visualization tool for cluster analysis and its suitabilities to serve as a pre-processor in ensemble learning models. The evaluation is conducted on a number of established benchmarks and real-world learning problems, namely, the policeman benchmark, two web spam detection problems, a network intrusion detection problem, and a malware detection problem. It is found that the visualization resulted from an HRSOM provides new insights concerning these learning problems. It is furthermore shown empirically that broad benefits from the use of HRSOMs in both clustering and classification problems can be expected.
机译:Kohonen的自组织特征映射(SOM)提供了一种有效的方法,可以将高维输入功能投影到低维显示空间,同时保留输入特征之间的拓扑关系。采用现代计算硬件优势的算法的最新进展介绍了高分辨率SOM的概念(HRSOMS)。本文调查了HRSOM作为集群分析的可视化工具的能力和适用性,以及其在集合学习模型中作为预处理器的可视化工具。评估是在许多建立的基准和现实世界学习问题上进行的,即警察基准,两个网垃圾邮件检测问题,网络入侵检测问题和恶意软件检测问题。结果发现,来自HRSOM产生的可视化提供了关于这些学习问题的新见解。此外,可以预期凭经验表明,可以预期在聚类和分类问题中使用HRSOMS的广泛益处。

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