首页> 外文会议>Ibero-American Conference on AI(IBERAMIA 2004); 20041122-26; Puebla(IT) >Geodesic Topographic Product: An Improvement to Measure Topology Preservation of Self-Organizing Neural Networks
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Geodesic Topographic Product: An Improvement to Measure Topology Preservation of Self-Organizing Neural Networks

机译:测地学地形图产品:自组织神经网络的度量拓扑保留的改进

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Self-organizing neural networks endeavour to preserve the topology of an input space by means of competitive learning. There are diverse measures that allow to quantify how good is this topology preservation. However, most of them are not applicable to measure non-linear input manifolds, since they don't consider the topology of the input space in their calculation. In this work, we have modified one of the most employed measures, the topographic product, incorporating the geodesic distance as distance measure among the reference vectors of the neurons. Thus, it is possible to use it with non-lineal input spaces. This improvement allows to extend the studies realized with the original topographic product focused to the representation of objects by means of self-organizing neural networks. It would be also useful to determine the right dimensionality that a network must have to adapt correctly to an input manifold.
机译:自组织神经网络努力通过竞争性学习来保留输入空间的拓扑。有多种方法可以量化此拓扑保存的性能。但是,由于它们在计算中没有考虑输入空间的拓扑结构,因此大多数不适用于测量非线性输入歧管。在这项工作中,我们修改了最常用的一种度量方法,即地形产品,将测地距离作为距离度量值纳入了神经元参考向量之间。因此,可以将其与非线性输入空间一起使用。这项改进使通过原始组织的神经网络可以将利用原始地形产品实现的研究扩展到对象的表示。确定网络必须正确适应输入歧管所必须的正确尺寸也将很有用。

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