A Survey on Multi-objective based clustering techniques for solving real life problems

Pooja Gupta, Vineet Sharma
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引用次数: 2

Abstract

Clustering is a popular data mining technique which can be applied to a given data set to identify the data objects that belong to a single class, such that data objects in different clusters are distinct while similarity exists for data objects belonging to the same cluster. Usually, clustering techniques are based on optimizing single objective function criteria, which may not be capable of performing well in many real time scenarios. Motivated by this many multi-objective based optimization techniques are discussed in this paper. Multi-objective based optimization techniques are capable of optimizing several conflicting objective functions simultaneously. Under this context, evolutionary based approach and simulated annealing based techniques are adopted in various MOO techniques and proven well in case of noise, non-spherical and high dimensional feature space. The paper further discusses various validity measures to evaluate the goodness of clustering techniques.
基于多目标聚类技术在解决现实问题中的研究进展
聚类是一种流行的数据挖掘技术,它可以应用于给定的数据集来识别属于单个类的数据对象,这样不同集群中的数据对象是不同的,而属于同一集群的数据对象存在相似性。通常,聚类技术是基于优化单目标函数标准,这可能无法在许多实时场景中表现良好。在此基础上,本文讨论了许多基于多目标的优化技术。基于多目标的优化技术能够同时优化多个相互冲突的目标函数。在此背景下,各种MOO技术采用了基于进化的方法和基于模拟退火的技术,并在噪声、非球形和高维特征空间中得到了很好的证明。本文进一步讨论了评价聚类技术优劣的各种效度指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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