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首页> 外文期刊>Psychometrika >Clustering Qualitative Data Based on Binary Equivalence Relations: Neighborhood Search Heuristics for the Clique Partitioning Problem
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Clustering Qualitative Data Based on Binary Equivalence Relations: Neighborhood Search Heuristics for the Clique Partitioning Problem

机译:基于二元等价关系的定性数据聚类:集团划分问题的邻域搜索启发式方法

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摘要

The clique partitioning problem (CPP) requires the establishment of an equivalence relation for the vertices of a graph such that the sum of the edge costs associated with the relation is minimized. The CPP has important applications for the social sciences because it provides a framework for clustering objects measured on a collection of nominal or ordinal attributes. In such instances, the CPP incorporates edge costs obtained from an aggregation of binary equivalence relations among the attributes. We review existing theory and methods for the CPP and propose two versions of a new neighborhood search algorithm for efficient solution. The first version (NS-R) uses a relocation algorithm in the search for improved solutions, whereas the second (NS-TS) uses an embedded tabu search routine. The new algorithms are compared to simulated annealing (SA) and tabu search (TS) algorithms from the CPP literature. Although the heuristics yielded comparable results for some test problems, the neighborhood search algorithms generally yielded the best performances for large and difficult instances of the CPP. Keywords equivalence relation - clique partitioning - clustering - heuristics - tabu search - simulated annealing - neighborhood search
机译:集团划分问题(CPP)要求为图的顶点建立等价关系,以使与该关系相关的边成本之和最小。 CPP在社会科学中具有重要的应用,因为它提供了一个框架,可以对根据名义或序数属性集合测量的对象进行聚类。在这种情况下,CPP合并了从属性之间的二元等效关系的聚合获得的边缘成本。我们回顾了CPP的现有理论和方法,并提出了两种版本的新邻域搜索算法以进行有效求解。第一个版本(NS-R)使用重定位算法搜索改进的解决方案,而第二个版本(NS-TS)使用嵌入式禁忌搜索例程。将新算法与CPP文献中的模拟退火(SA)和禁忌搜索(TS)算法进行了比较。尽管启发式方法在某些测试问题上产生了可比的结果,但是邻域搜索算法通常对于大型且困难的CPP实例产生了最佳性能。等价关系-群体划分-聚类-启发式-禁忌搜索-模拟退火-邻域搜索

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