在涉及多个专家评估的约束聚类任务中寻找全局最优的方法

A. Zuenko, O. Fridman, O. N. Zuenko
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引用次数: 0

摘要

本文提出了一种解决约束聚类问题的方法,该方法基于由几位独立专家评估聚类对象的特征所获得的数据的聚合,以及使用原始启发式的约束规划方法分析聚类的备选变体。聚类的对象被表示为多集,这使得使用合适的专家意见聚合方法成为可能。提出将约束聚类问题作为约束满足问题来解决。在约束满足问题的形式化阶段,主要关注约束数量的减少和简化问题。在该方法的框架内,我们创建了:a)一种通过多集的分层聚类来估计目标函数最优值的方法,考虑到主题领域的先验约束;b)一种基于获得的估计值,以“智能表”的形式对期望的解决方案产生额外约束的方法。该方法使我们能够在所考虑的具有高维特征的类的问题中找到最佳划分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An approach to finding a global optimum in constrained clustering tasks involving the assessments of several experts
An approach to solving the constrained clustering problem has been developed, based on the aggregation of data obtained as a result of evaluating the characteristics of clustered objects by several independent experts, and the analysis of alternative variants of clustering by constraint programming methods using original heuristics. Objects clusterized are represented as multisets, which makes it possible to use appropriate methods of aggregation of expert opinions. It is proposed to solve the constrained clustering problem as a constraint satisfaction problem. The main attention is paid to the issue of reducing the number and simplifying the constraints of the constraint satisfaction problem at the stage of its formalization. Within the framework of the approach, we have created: a) a method for estimating the optimal value of the objective function by hierarchical clustering of multisets, taking into account a priori constraints of the subject domain, and b) a method for generating additional constraints on the desired solution in the form of “smart tables”, based on the obtained estimate. The approach allows us to find the best partition in the problems of the class under consideration, which are characterized by a high dimension.
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