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Dynamic topology learning with the probabilistic self-organizing graph

机译:带有概率自组织图的动态拓扑学习

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摘要

Self-organizing neural networks are usually focused on prototype learning, while the topology is held fixed during the learning process. Here a method to adapt the topology of the network so that it reflects the internal structure of the input distribution is proposed. This leads to a self-organizing graph, where each unit is a mixture component of a mixture of Gaussians (MoG). The corresponding update equations are derived from the stochastic approximation framework. This approach combines the advantages of probabilistic mixtures with those of self-organization. Experimental results are presented to show the self-organization ability of our proposal and its performance when used with multivariate datasets in classification and image segmentation tasks.
机译:自组织神经网络通常专注于原型学习,而拓扑在学习过程中保持固定。在这里,提出了一种适应网络拓扑结构以反映输入分布内部结构的方法。这将导致一个自组织图,其中每个单位都是高斯混合(MoG)的混合成分。相应的更新方程式是从随机近似框架得出的。这种方法结合了概率混合与自组织混合的优点。实验结果表明,该建议的自组织能力及其在分类和图像分割任务中与多元数据集一起使用时的性能。

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