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Unsupervised and semi-supervised clustering by message passing: soft-constraint affinity propagation

机译:通过消息传递进行无监督和半监督聚类:软约束亲和力传播

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Soft-constraint affinity propagation (SCAP) is a new statistical-physics based clustering technique [M. Leone, Sumedha, M. Weigt, Bioinformatics 23, 2708 (2007)]. First we give the derivation of a simplified version of the algorithm and discuss possibilities of time- and memory-efficient implementations. Later we give a detailed analysis of the performance of SCAP on artificial data, showing that the algorithm efficiently unveils clustered and hierarchical data structures. We generalize the algorithm to the problem of semi-supervised clustering, where data are already partially labeled, and clustering assigns labels to previously unlabeled points. SCAP uses both the geometrical organization of the data and the available labels assigned to few points in a computationally efficient way, as is shown on artificial and biological benchmark data.
机译:软约束亲和力传播(SCAP)是一种基于统计物理学的新聚类技术[M. Leone,Sumedha,M.Weigt,生物信息学23,2708(2007)。首先,我们给出了该算法的简化版本,并讨论了节省时间和内存的实现方式的可能性。稍后,我们将对SCAP在人工数据上的性能进行详细分析,表明该算法有效地揭示了聚类和分层数据结构。我们将算法推广到半监督聚类的问题,其中数据已被部分标记,聚类将标记分配给先前未标记的点。如人工和生物基准数据所示,SCAP既以数据的几何组织形式,又以有效的计算方式分配了分配给几个点的可用标签。

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