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A flexible cluster-oriented alternative clustering algorithm for choosing from the Pareto front of solutions

机译:灵活的面向集群的替代集群算法,可从解决方案的Pareto前端进行选择

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摘要

Supervised alternative clustering is the problem of finding a set of clusterings which are of high quality and different from a given negative clustering. The task is therefore a clear multi-objective optimization problem. Optimizing two conflicting objectives at the same time requires dealing with trade-offs. Most approaches in the literature optimize these objectives sequentially (one objective after another one) or indirectly (by some heuristic combination of the objectives). Solving a multi-objective optimization problem in these ways can result in solutions which are dominated, and not Pareto-optimal. We develop a direct algorithm, called COGNAC, which fully acknowledges the multiple objectives, optimizes them directly and simultaneously, and produces solutions approximating the Pareto front. COGNAC performs the recombination operator at the cluster level instead of at the object level, as in the traditional genetic algorithms. It can accept arbitrary clustering quality and dissimilarity objectives and provides solutions dominating those obtained by other state-of-the-art algorithms. Based on COGNAC, we propose another algorithm called SGAC for the sequential generation of alternative clusterings where each newly found alternative clustering is guaranteed to be different from all previous ones. The experimental results on widely used benchmarks demonstrate the advantages of our approach.
机译:有监督的替代聚类是找到一组高质量的聚类并且与给定的负聚类不同的聚类的问题。因此,该任务是一个明确的多目标优化问题。同时优化两个相互矛盾的目标需要权衡取舍。文献中的大多数方法都是依次(一个目标接一个目标)或间接地(通过目标的某种启发式组合)优化这些目标。以这些方式解决多目标优化问题可能会导致解决方案占主导地位,而不是帕累托最优。我们开发了一种称为COGNAC的直接算法,该算法可以充分确认多个目标,直接并同时优化它们,并产生近似帕累托前沿的解决方案。与传统的遗传算法一样,COGNAC在群集级别而不是在对象级别执行重组运算符。它可以接受任意的聚类质量和相异性目标,并提供解决方案,该解决方案主导了其他最新算法所获得的解决方案。基于COGNAC,我们提出了另一种称为SGAC的算法,用于依次生成替代聚类,其中,每个新发现的替代聚类都保证与所有先前的聚类都不相同。在广泛使用的基准上的实验结果证明了我们方法的优势。

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