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Large graph clustering using DCT-based graph clustering

机译:使用基于DCT的图聚类的大型图聚类

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With the proliferation of the World Wide Web, graph structures have arisen on social network/media sites. Such graphs usually number several million nodes, i.e., they can be characterized as Big Data. Graph clustering is an important analysis tool for other graph related tasks, such as compression, community discovery and recommendation systems, to name a few. We propose a novel extension to a graph clustering algorithm, that attempts to cluster a graph, through the optimization of selected terms of the graph weight/adjacency matrix Discrete Cosine Transform.
机译:随着万维网的扩散,在社交网络/媒体站点上出现了图结构。这样的图通常有数百万个节点,即它们可以被描述为大数据。图集群是其他与图相关的任务(例如压缩,社区发现和推荐系统)的重要分析工具。我们提出了一种新颖的图聚类算法扩展,它通过对图权重/邻接矩阵离散余弦变换的选定项进行优化来尝试对图进行聚类。

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