首页> 外文会议>International Conference on Neural Information Processing;ICONIP 2007 >Self-Organizing Clustering with Map of Nonlinear Varieties Representing Variation in One Class
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Self-Organizing Clustering with Map of Nonlinear Varieties Representing Variation in One Class

机译:具有一类变化的非线性品种映射的自组织聚类

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Adaptive Subspace Self-Organizing Map (ASSOM) is an evolution of Self-Organizing Map, where each computational unit defines a linear subspace. Recently, its modified version, where each unit defines an linear manifold instead of the linear subspace, has been proposed. The linear manifold in a unit is represented by a mean vector and a set of basis vectors. After training, these units result in a set of linear variety detectors. In another point of view, we can consider the AMSOM represents the latent commonality of data as linear structures. In numerous cases, however, these are not enough to describe the latent commonality of data because of its linearity. In this paper, the nonlinear variety is considered in order to represent a diversity of data in a class. The effectiveness of the proposed method is verified by applying it to some simple classification problems.
机译:自适应子空间自组织图(ASSOM)是自组织图的演变,其中每个计算单元都定义了一个线性子空间。最近,已经提出了其修改版本,其中每个单元都定义了线性流形而不是线性子空间。一个单元中的线性流形由平均向量和一组基本向量表示。训练后,这些单元将产生一组线性变化检测器。从另一个角度来看,我们可以认为AMSOM将数据的潜在共性表示为线性结构。但是,在许多情况下,由于它们的线性关系,这些不足以描述数据的潜在共性。在本文中,为了代表一类数据的多样性,考虑了非线性变化。通过将其应用于一些简单的分类问题,验证了该方法的有效性。

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