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Ensemble Clustering using Semidefinite Programming

机译:使用半定规划的集成聚类

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We consider the ensemble clustering problem where the task is to 'aggregate' multiple clustering solutions into a single consolidated clustering that maximizes the shared information among given clustering solutions. We obtain several new results for this problem. First, we note that the notion of agreement under such circumstances can be better captured using an agreement measure based on a 2D string encoding rather than voting strategy based methods proposed in literature. Using this generalization, we first derive a nonlinear optimization model to maximize the new agreement measure. We then show that our optimization problem can be transformed into a strict 0-1 Semidefinite Program (SDP) via novel con-vexification techniques which can subsequently be relaxed to a polynomial time solvable SDP. Our experiments indicate improvements not only in terms of the proposed agreement measure but also the existing agreement measures based on voting strategies. We discuss evaluations on clustering and image segmentation databases.
机译:我们考虑整体群集问题,任务是将多个群集解决方案“聚合”到单个合并的群集中,以使给定群集解决方案之间的共享信息最大化。对于此问题,我们获得了一些新的结果。首先,我们注意到,在这种情况下,使用基于2D字符串编码的协议度量方法,而不是文献中提出的基于投票策略的方法,可以更好地理解协议的概念。使用这种概括,我们首先导出非线性优化模型以最大化新的一致性度量。然后,我们表明,我们的优化问题可以通过新颖的凸化技术转化为严格的0-1半定程序(SDP),随后可以放宽为多项式时间可解决的SDP。我们的实验表明,不仅在提议的协议措施方面,而且在基于投票策略的现有协议措施方面,都有改进。我们讨论了对聚类和图像分割数据库的评估。

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