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Classification of Asymmetric Proximity Data

机译:非对称邻近数据的分类

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When clustering asymmetric proximity data, only the average amounts are often considered by assuming that the asymmetry is due to noise. But when the asymmetry is structural, as typically may happen for exchange flows, migration data or confusion data, this may strongly affect the search for the groups because the directions of the exchanges are ignored and not integrated in the clustering process. The clustering model proposed here relies on the decomposition of the asymmetric dissimilarity matrix into symmetric and skew-symmetric effects both decomposed in within and between cluster effects. The classification structures used here are generally based on two different partitions of the objects fitted to the symmetric and the skew-symmetric part of the data, respectively; the restricted case is also presented where the partition fits jointly both of them allowing for clusters of objects similar with respect to the average amounts and directions of the data. Parsimonious models are presented which allow for effective and simple graphical representations of the results.
机译:当对不对称的邻近数据进行聚类时,通常通过假设不对称性是由于噪声而仅考虑平均值。但是,当非对称性是结构性的时(通常发生在交换流,迁移数据或混乱数据中),这可能会严重影响对组的搜索,因为交换的方向会被忽略并且不会集成到聚类过程中。这里提出的聚类模型依赖于将非对称性不相似矩阵分解成在聚类效应内部和聚类效应之间分解的对称和偏斜对称效应。这里使用的分类结构通常基于分别适合数据对称部分和偏斜部分的对象的两个不同分区;还给出了受限情况,其中分区共同适合两个分区,从而允许对象的群集在数据的平均数量和方向方面相似。提出了简约模型,该模型允许有效且简单的图形表示结果。

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