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首页> 外文期刊>Bulletin of the Polish Academy of Sciences. Technical Sciences >Machine-part grouping and cluster analysis: similarities, distances and grouping criteria
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Machine-part grouping and cluster analysis: similarities, distances and grouping criteria

机译:机器零件分组和聚类分析:相似性,距离和分组标准

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摘要

The paper considers the machine-part grouping problem, as equivalent to partitioning the set of machines and operations into subsets, corresponding to block diagonalisation with constraints. The attempts to solve the problem with clustering methods are outlined. The difficulties encountered are presented, related to (i) ambiguity of formulations; (ii) selection of criteria; and (iii) lack of effective algorithms. These are illustrated in more detail with a limited survey of similarity and distance definitions, and of criteria used, constituting the main body of the paper. The return is proposed to the basic paradigm of cluster analysis, as providing simple and fast algorithms, which, even if not yielding optimal solutions, can be controlled in a simple manner, and their solutions improved.
机译:本文认为机器零件分组问题等同于将机器和操作集划分为子集,这与具有约束的块对角化相对应。概述了使用聚类方法解决问题的尝试。提出了遇到的困难,与(i)配方含糊不清有关; (ii)选择标准; (iii)缺乏有效的算法。通过对相似性和距离定义以及所使用准则的有限调查,可以更详细地说明这些内容,这些构成了论文的主体。由于提供了简单,快速的算法,即使不产生最优解,也可以以简单的方式对其进行控制,从而改善了聚类分析的基本范式。

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