半监督关系模糊聚类中聚类数的自动确定

Norah Ibrahim Fantoukh, M. Ismail, Ouiem Bchir
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引用次数: 2

摘要

半监督聚类依赖于标记和未标记的数据来引导聚类过程走向最优分类并摆脱局部最小值。本文提出了一种基于自适应局部距离测度的模糊关系半监督聚类算法。提出的聚类算法利用侧信息,并将其表述为一组约束来监督学习任务。这些约束是用奖惩条款来表达的,它们被整合到一个新的目标函数中。特别地,我们将聚类任务表述为通过最小化所提出的目标函数的优化问题。通过求解这一优化问题,可以得到不同目标函数参数的最优值,从而得到所提出的半监督聚类算法。除了能够执行数据聚类和学习数据实例之间的潜在不相似性度量外,我们的算法还以无监督的方式确定最佳聚类数量。此外,所提出的SSRF-CA被设计用于处理关系数据。这使得它适用于只有数据实例之间的成对相似(或不相似)信息可用的应用程序。在本文中,我们证明了所提出的算法在使用包含不同形状的不同数量的聚类的各种合成和现实世界基准数据集对数据进行分区时学习适当的局部距离度量和最佳聚类数量的能力。实验结果表明,所提出的SSRF-CA在其他最先进的算法中取得了最好的性能,并证实了我们的聚类方法的优越性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Determination of the Number of Clusters for Semi-Supervised Relational Fuzzy Clustering
Semi-supervised clustering relies on both labeled and unlabeled data to steer the clustering process towards optimal categorization and escape from local minima. In this paper, we propose a novel fuzzy relational semi-supervised clustering algorithm based on an adaptive local distance measure (SSRF-CA). The proposed clustering algorithm utilizes side-information and formulates it as a set of constraints to supervise the learning task. These constraints are expressed using reward and penalty terms, which are integrated into a novel objective function. In particular, we formulate the clustering task as an optimization problem through the minimization of the proposed objective function. Solving this optimization problem provides the optimal values of different objective function parameters and yields the proposed semi-supervised clustering algorithm. Along with its ability to perform data clustering and learn the underlying dissimilarity measure between the data instances, our algorithm determines the optimal number of clusters in an unsupervised manner. Moreover, the proposed SSRF-CA is designed to handle relational data. This makes it appropriate for applications where only pairwise similarity (or dissimilarity) information between data instances is available. In this paper, we proved the ability of the proposed algorithm to learn the appropriate local distance measures and the optimal number of clusters while partitioning the data using various synthetic and real-world benchmark datasets that contain varying numbers of clusters with diverse shapes. The experimental results revealed that the proposed SSRF-CA accomplished the best performance among other state-of-the-art algorithms and confirmed the outperformance of our clustering approach.
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