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Dense Neighborhoods on Affinity Graph

机译:亲和图上的密集社区

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In this paper, we study the problem of how to reliably compute neighborhoods on affinity graphs. The k-nearest neighbors (kNN) is one of the most fundamental and simple methods widely used in many tasks, such as classification and graph construction. Previous research focused on how to efficiently compute kNN on vectorial data. However, most real-world data have no vectorial representations, and only have affinity graphs which may contain unreliable affinities. Since the kNN of an object o is a set of k objects with the highest affinities to o, it is easily disturbed by errors in pairwise affinities between o and other objects, and also it cannot well preserve the structure underlying the data. To reliably analyze the neighborhood on affinity graphs, we define the k-dense neighborhood (kDN), which considers all pairwise affinities within the neighborhood, i.e., not only the affinities between o and its neighbors but also between the neighbors. For an object o, its kDN is a set kDN(o) of k objects which maximizes the sum of all pairwise affinities of objects in the set {o}∪kDN(o). We analyze the properties of kDN, and propose an efficient algorithm to compute it. Both theoretic analysis and experimental results on shape retrieval, semi-supervised learning, point set matching and data clustering show that kDN significantly outperforms kNN on affinity graphs, especially when many pairwise affinities are unreliable.
机译:在本文中,我们研究了如何在亲和图上可靠地计算邻域的问题。 k最近邻(kNN)是广泛用于许多任务(例如分类和图形构建)的最基本,最简单的方法之一。先前的研究集中在如何有效地计算矢量数据上的kNN。但是,大多数现实世界数据没有矢量表示,仅具有可能包含不可靠亲和力的亲和图。由于对象o的kNN是与o具有最高亲和力的k个对象的集合,因此很容易受到o与其他对象之间的成对亲和力错误的干扰,并且它也不能很好地保留数据基础。为了在亲和图上可靠地分析邻域,我们定义了k密集邻域(kDN),它考虑了邻域内的所有成对亲和力,即不仅考虑了o与邻域之间的亲和力,还考虑了邻域之间的亲和力。对于一个对象o,它的kDN是k个对象的集合kDN(o),它使集合{o} DNkDN(o)中所有对象的所有成对亲和力之和最大化。我们分析了kDN的属性,并提出了一种有效的算法来对其进行计算。在形状检索,半监督学习,点集匹配和数据聚类方面的理论分析和实验结果均表明,在亲和图上,kDN明显优于kNN,尤其是当许多成对亲和力不可靠时。

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