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Measuring Topology Preservation in Maps of Real-World Data

机译:测量真实数据地图中的拓扑保留

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Topography of neural maps is an advantageous property, e.g. in the presence of noise in a transmission channel or for data visualization. Yet, this property is difficult to define and to quantify. Reviewing some recently proposed measures to quantify topography, we give results for maps trained on synthetic data as well as on four real-world data sets. The measures are found to do not a perfect, but an adequate job, e.g. in selecting a topographically optimal output space dimension.
机译:神经图的地形是一种有利的特性,例如。在传输通道中存在噪声或用于数据可视化的情况下。但是,很难定义和量化此属性。回顾一些最近提出的量化地形的措施,我们给出了在合成数据以及四个真实数据集上训练的地图的结果。发现这些措施不是完美的,而是适当的工作,例如。在选择地形上最佳的输出空间尺寸时。

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