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Distributed and Incremental Clustering Based on Weighted Affinity Propagation

机译:基于加权关联传播的分布式和增量群集

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A new clustering algorithm Affinity Propagation (AP) is hindered by its quadratic complexity. The Weighted Affinity Propagation (WAP) proposed in this paper is used to eliminate this limitation, support two scalable algorithms. Distributed AP clustering handles large datasets by merging the exemplars learned from subsets. Incremental AP extends AP to online clustering of data streams. The paper validates all proposed algorithms on benchmark and on real-world datasets. Experimental results show that the proposed approaches offer a good trade-off between computational effort and performance.
机译:通过其二次复杂性阻碍了新的聚类算法亲和力传播(AP)。本文提出的加权亲和力传播(WAP)用于消除该限制,支持两个可扩展算法。分布式AP聚类通过合并来自子集中学到的示例来处理大型数据集。增量AP将AP扩展到数据流的在线群集。该论文验证了基准和实际数据集的所有提议算法。实验结果表明,拟议的方法在计算工作与表现之间提供了良好的权衡。

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