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Graph Degree Linkage: Agglomerative Clustering on a Directed Graph

机译:图度链接:有向图上的聚集聚类

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This paper proposes a simple but effective graph-based agglomerative algorithm, for clustering high-dimensional data. We explore the different roles of two fundamental concepts in graph theory, indegree and outdegree, in the context of clustering. The average indegree reflects the density near a sample, and the average outdegree characterizes the local geometry around a sample. Based on such insights, we define the affinity measure of clusters via the product of average indegree and average outdegree. The product-based affinity makes our algorithm robust to noise. The algorithm has three main advantages: good performance, easy implementation, and high computational efficiency. We test the algorithm on two fundamental computer vision problems: image clustering and object matching. Extensive experiments demonstrate that it outperforms the state-of-the-arts in both applications.1
机译:本文提出了一种简单而有效的基于图的聚集算法,用于对高维数据进行聚类。我们在聚类的背景下探讨了图论中两个基本概念的不同作用,即度数和度数。平均度数反映样品附近的密度,平均度数描述样品周围的局部几何形状。基于这些见解,我们通过平均度数和平均度数的乘积定义聚类的亲和力度量。基于乘积的相似性使我们的算法对噪声具有鲁棒性。该算法具有三个主要优点:良好的性能,易于实现和较高的计算效率。我们在两个基本的计算机视觉问题上测试该算法:图像聚类和对象匹配。大量的实验表明,它在两种应用中都优于最新技术。1

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