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Robust Growing Hierarchical Self Organizing Map

机译:强大的增长分层自组织地图

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The Growing Hierarchical Self Organizing Map (GHSOM) was introduced as a dynamical neural network model that adapts its architecture during its unsupervised training process to represents the hierarchical relation of the data. However, the dynamical algorithm of the GHSOM is sensitive to the presence of noise and outliers, and the model will no longer preserve the topology of the data space as we will show in this paper. The outliers introduce an influence to the GHSOM model during the training process by locating prototypes far from the majority of data and generating maps for few samples data. Therefore, the network will not effectively represent the topological structure of the data under study. In this paper, we propose a variant to the GHSOM algorithm that is robust under the presence of outliers in the data by being resistant to these deviations. We call this algorithm Robust GHSOM (RGHSOM). We will illustrate our technique on synthetic and real data sets.
机译:越来越多的分层自组织地图(GHSOM)被引入为动态神经网络模型,可在其无监督的培训过程中适应其架构,以代表数据的分层关系。然而,GHSOM的动态算法对噪声和异常值的存在敏感,而模型将不再保留数据空间的拓扑,因为我们将在本文中显示。异常值通过定位远离大多数数据的原型和生成映射的原型来对培训过程中的影响对GHSOM模型产生影响。因此,网络将不会有效地表示正在研究的数据的拓扑结构。在本文中,我们向GHSOM算法提出了一种变体,该算法在数据的存在下通过抵抗这些偏差而在数据的存在下是鲁棒的。我们称该算法强大的GHSOM(RGHSOM)。我们将说明我们对合成和实际数据集的技术。

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