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Enhanced Data Topology Preservation with Multilevel Interior Growing Self-Organizing Maps

机译:增强数据拓扑保存与多级内部生长自组织地图

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This paper presents a novel architecture of SOM which organizes itself over time. The proposed method called MIGSOM (Multilevel Interior Growing Self-Organizing Maps) which is generated by a growth process. However, the network is a rectangular structure which adds nodes from the boundary as well as the interior of the network. The interior nodes will be added in a superior level of the map. Consequently, MIGSOM can have three-Dimensional structure with multi-levels oriented maps. A performance comparison of three Self-Organizing networks, the Kohonen feature Map (SOM), the Growing Grid (GG) and the proposed MIGSOM is made. For this purpose, the proposed method is tested with synthetic and real datasets. Indeed, we show that our method (MIGSOM) improves better performance for data quantification and topology preservation with similar map size of GG and SOM.
机译:本文提出了一种新颖的SOM结构,它随着时间的推移组织起来。所提出的方法由生长过程产生的MIGSOM(多级内部生长自组织地图)。然而,网络是一个矩形结构,它从边界和网络内部添加节点。内部节点将在地图的卓越级别中添加。因此,MIGSOM可以具有三维结构,其具有多级定向图。制作了三个自组织网络,Kohonen特征图(SOM),越来越多的网格(GG)和所提出的MIGSOM的性能比较。为此,用合成和实时数据集测试所提出的方法。实际上,我们表明我们的方法(MIGSOM)提高了具有类似地图大小的数据量化和拓扑保存的更好的性能,以及GG和SOM的类似地图。

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