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Meta-cluster Based Consensus Clustering with Local Weighting and Random Walking

机译:基于元集群的局部加权和随机行走的共识聚类

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Consensus clustering has in recent years become one of the most popular topics in the clustering research, due to its promising ability in combining multiple weak base clusterings into a strong consensus result. In this paper, we aim to deal with three challenging issues in consensus clustering, i.e., the high-order integration issue, the local reliability issue, and the efficiency issue. Specifically, we present a new consensus clustering approach termed meta-cluster based consensus clustering with local weighting and random walking (MC~3LR). To ensure the computational efficiency, we use the base clusters as the graph nodes to construct a cluster-wise similarity graph. Then, we perform random walks on the cluster-wise similarity graph to explore its high-order structural information, based on which a new cluster-wise similarity measure is derived. To tackle the local reliability issue, all of the base clusters are assessed and weighted according to the ensemble-driven cluster index (ECI). Finally, a locally weighted meta-clustering process is performed on the newly obtained cluster-wise similarity measure to build the consensus clustering result. Experimental results on multiple datasets have shown the effectiveness and efficiency of the proposed approach.
机译:近年来,共识聚类成为集群研究中最受欢迎的主题之一,这是由于其希望将多个弱大基地集群与强大共识结果组合起来的能力。在本文中,我们的目标是处理共识聚类的三个挑战性问题,即,高阶集成问题,当地可靠性问题和效率问题。具体而言,我们提出了一种新的共识聚类方法,称为与本地加权和随机行走(MC〜3LR)的基于元集群的共识聚类。为确保计算效率,我们使用基本集群作为图形节点来构建群集方面的相似图。然后,我们在群集方面相似图上执行随机散步,以探索其高阶结构信息,基于哪个新的群集相似度测量。为了解决本地可靠性问题,根据集合驱动的集群指数(ECI)评估和加权所有基簇。最后,对新获得的聚类相似度测量执行了本地加权元聚类过程以构建共识聚类结果。多个数据集的实验结果显示了所提出的方法的有效性和效率。

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