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A Hybrid Visualization-Induced Self-Organizing Map for Multi Dimensional Reduction and Data Visualization

机译:多维可视化和数据可视化的混合可视化诱导自组织图

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Self-Organizing Map (SOM), being a prominent unsupervised learning algorithm, is often used for multivariate data visualization. However, SOM only preserves inter-neurons distances in the input space and not in the output space due to the rigid grid used in SOM. Visualization-induced Self-Organizing Map (ViSOM) has been proposed as a visualization-wise improved variation of the popular unsupervised SOM. However ViSOM suffers from dead neuron problem as a huge number of neurons fall outside of the data region due to the regularization effect, even when the regularization control parameter is properly chosen. In this paper, a hybrid ViSOM that employs a modified Adaptive Coordinates (AC) technique is proposed for data visualization. Empirical studies of the hybrid technique yield promising topology preserved visualizations and data structure exploration for synthetic as well as benchmarking datasets.
机译:自组织映射(SOM)是一种杰出的无监督学习算法,通常用于多变量数据可视化。但是,由于SOM中使用的刚性网格,SOM仅保留输入空间中的神经元间距,而不保留输出空间中的神经元间距。可视化诱导的自组织图(ViSOM)已被建议作为流行的无监督SOM的可视化改进方法。但是,由于正则化效应,即使正确选择了正则化控制参数,由于大量神经元掉落到数据区域之外,ViSOM也会出现神经元死亡的问题。在本文中,提出了一种采用改进的自适应坐标(AC)技术的混合ViSOM用于数据可视化。对混合技术的经验研究为合成以及基准数据集提供了有希望的拓扑保留的可视化和数据结构探索。

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