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Proximity-Based Clustering: A Search for Structural Consistency in Data With Semantic Blocks of Features

机译:基于接近度的聚类:具有特征语义块的数据结构一致性搜索

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摘要

A class of clustering problems that is studied here is concerned with the development of a structure of a global nature given a collection of structures (clusters) constructed locally for data that are represented by several collections (blocks) of features. These blocks of features come with a well-defined semantics. For instance, in spatiotemporal data, a certain block of features concerns a spatial component of the data (say, x–y or x–y–z coordinates), while another one deals with the features that describe time series associated with the corresponding locations. The results of clustering that are being produced locally are reconciled by minimizing a distance between the proximity matrices that are formed at the higher conceptual level and induced by the individual partition matrices. The optimization problem is formulated and presented along with its iterative scheme.
机译:在这里研究的一类聚类问题与全局性质的结构的发展有关,给定了一组本地构造的结构(簇),这些结构由数据的多个集合(块)表示,它们是为数据局部构造的。这些功能块具有明确定义的语义。例如,在时空数据中,某些要素块与数据的空间成分有关(例如,x–y或x–y–z坐标),而另一要素处理的是描述与相应位置相关的时间序列的要素。通过最小化在较高概念级别形成并由各个分区矩阵引起的邻近矩阵之间的距离,可以协调本地产生的聚类结果。提出并提出了优化问题及其迭代方案。

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