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A new semi-supervised clustering technique using multi-objective optimization

机译:一种新的半监督聚类技术,使用多目标优化

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摘要

Semi-supervised clustering techniques have been proposed in the literature to overcome the problems associated with unsupervised and supervised classification. It considers a small amount of labeled data and the whole data distribution during the process of clustering a data. In this paper, a new approach towards semi-supervised clustering is implemented using multiobjective optimization (MOO) framework. Four objective functions are optimized using the search capability of a multiobjective simulated annealing based technique, AMOSA. These objective functions are based on some unsupervised and supervised information. First three objective functions represent, respectively, the goodness of the partitioning in terms of Euclidean distance, total symmetry present in the clusters and the cluster connectedness. For the last objective function, we have considered different external cluster validity indices, including adjusted rand index, rand index, a newly developed min-max distance based MMI index, NMMI index and Minkowski Score. Results show that the proposed semi-supervised clustering technique can effectively detect the appropriate number of clusters as well as the appropriate partitioning from the data sets having either well-separated clusters of any shape or symmetrical clusters with or without overlaps. Twenty four artificial and five real-life data sets have been used in the evaluation. We develop five different versions of Semi-GenClustMOO clustering technique by varying the external cluster validity indices. Obtained partitioning results are compared with another recently developed multiobjective semi-supervised clustering technique, Mock-Semi. At the end of the paper the effectiveness of the proposed Semi-GenClustMOO clustering technique is shown in segmenting one remote sensing satellite image on the part from the city of Kolkata.
机译:在文献中提出了半监督聚类技术,以克服与无监督和监督分类相关的问题。它在群集数据过程中考虑少量标记数据和整个数据分布。在本文中,使用多目标优化(MOO)框架实现了半监督聚类的新方法。使用基于多目标模拟的退火技术的搜索能力进行了优化了四种目标功能。这些目标职能基于一些无人监督和监督的信息。前三个客观函数分别代表了欧几里德距离的分区的良好,簇中存在的总对称性和集群连接。对于最后一个客观函数,我们考虑了不同的外部集群有效性指数,包括调整的Rand Index,Rand Index,新开发的最大距离基于MMI索引,NMMI索引和Minkowski评分。结果表明,所提出的半监督聚类技术可以有效地检测适当数量的簇以及从具有或没有重叠的任何形状或对称簇的分离群的数据集的适当分区。在评估中使用了二十四个人造和五个现实生活数据集。通过改变外部群集有效性指数,我们开发五种不同版本的半GenclustMoo聚类技术。将获得的分区结果与另一个最近开发的多目标半监督聚类技术进行比较,模拟半导体。在纸质结束时,所提出的半GenclustMoo聚类技术的有效性显示在从加尔各答市分段一个遥感卫星图像分段。

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