Iterative Optimum-Path Forest: A Graph-Based Data Clustering Framework

David Aparco-Cardenas, Alexander X. Falcão, P. J. Rezende
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Abstract

Data clustering is widely recognized as a fundamental technique of paramount importance in pattern recognition and data mining. It is extensively used in many fields of the sciences, business and engineering, covering a broad spectrum of applications. Despite the large number of clustering methods, only a few of them take advantage of optimum connectivity among samples for more effective clustering. In this work, we aim to fill this gap by introducing a novel graph-based data clustering framework, called Iterative Optimum-Path Forest (IOPF), that exploits optimum connectivity for the design of improved clustering methods. The IOPF framework consists of four fundamental components: (i) sampling of a seed set S, (ii) partition of the graph induced from the dataset samples by an Optimum-Path Forest (OPF) rooted at S, (iii) recomputation of S based on the previous graph partition, and, after multiple iterations of the last two steps, (iv) selection of the forest with the lowest total cost across all iterations. IOPF can be regarded as a generalization of the Iterative Spanning Forest (ISF) framework for superpixel segmentation from the image domain to the feature space. Herein, we present four IOPF-based clustering solutions to illustrate distinct choices of its constituent components. These are thereafter employed to address three different problems, namely, unsupervised object segmentation, road network analysis and clustering of synthetic two-dimensional datasets, in order to assess their effectiveness under various graph topologies, and to ascertain their efficacy and robustness when compared to competitive baselines.
迭代最优路径森林:一个基于图的数据聚类框架
数据聚类被广泛认为是模式识别和数据挖掘中最重要的基础技术。它广泛应用于科学、商业和工程的许多领域,涵盖了广泛的应用领域。尽管有大量的聚类方法,但只有少数方法利用样本之间的最佳连通性来实现更有效的聚类。在这项工作中,我们的目标是通过引入一种新的基于图的数据聚类框架来填补这一空白,该框架称为迭代最优路径森林(IOPF),该框架利用最佳连通性来设计改进的聚类方法。IOPF框架由四个基本组成部分组成:(i)种子集S的采样,(ii)基于S的最优路径森林(OPF)对数据集样本产生的图进行分区,(iii)基于前一个图分区重新计算S,并且在最后两个步骤的多次迭代之后,(iv)选择所有迭代中总成本最低的森林。IOPF可以看作是迭代生成森林(ISF)框架的一种推广,用于从图像域到特征空间的超像素分割。在此,我们提出了四种基于iopf的聚类解决方案,以说明其组成部分的不同选择。这些方法随后被用于解决三个不同的问题,即无监督对象分割、道路网络分析和合成二维数据集的聚类,以评估它们在各种图拓扑下的有效性,并确定它们与竞争基线相比的有效性和鲁棒性。
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