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Unsupervised Learning: Self-aggregation in Scaled Principal Component Space

机译:无人监督的学习:缩放主成分空间中的自我聚集

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We demonstrate that data clustering amounts to a dynamic process of self-aggregation in which data objects move towards each other to form clusters, revealing the inherent pattern of similarity. Self-aggregation is governed by connectivity and occurs in a space obtained by a nonlinear scaling of principal component analysis (PCA). The method combines dimensionality reduction with clustering into a single framework. It can apply to both square similarity matrices and rectangular association matrices.
机译:我们展示了数据聚类量相当于自聚集的动态过程,其中数据对象朝向彼此移动以形成群集,揭示了相似性的固有模式。自聚聚合由连接管理,并且发生在通过主成分分析(PCA)的非线性缩放而获得的空间中。该方法将维数减少与群集相结合到单个框架中。它可以应用于方形相似度矩阵和矩形关联矩阵。

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