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Specialization processes in on-line unsupervised learning

机译:在线无监督学习的专业化过程

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摘要

From the recent analysis of supervised learning by on-line gradient descent in multilayered neural networks it is known that the necessary process of student specialization can be delayed significantly. We demonstrate that this phenomenon also occurs in various models of unsupervised learning. A solvable model of competitive learning is presented, which identifies prototype vectors suitable for the representation of high-dimensional data. The specific case of two overlapping clusters of data and a matching number of prototype vectors exhibits non-trivial behaviour like almost stationary plateau configurations. As a second example scenario we investigate the application of Sanger's algorithm for principal component analysis in the presence of two relevant directions in input space. Here, the fast learning of the first principal component may lead to an almost complete loss of initial knowledge about the second one. [References: 18]
机译:从最近在多层神经网络中通过在线梯度下降进行的监督学习的分析得知,学生专业化的必要过程可能会大大延迟。我们证明了这种现象也出现在无监督学习的各种模型中。提出了一种可竞争的学习模型,该模型确定了适合于高维数据表示的原型矢量。两个重叠的数据簇和匹配数量的原型向量的特定情况表现出非平凡的行为,如几乎平稳的平台配置。作为第二个示例场景,我们研究在输入空间中存在两个相关方向的情况下,桑格算法在主成分分析中的应用。在这里,对第一主成分的快速学习可能会导致几乎完全失去有关第二主成分的初始知识。 [参考:18]

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