AF-DBSCAN:一种基于DBSCAN方法的无监督自动模糊聚类方法

S. Jebari, A. Smiti, Aymen Louati
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引用次数: 4

摘要

自动聚类问题对提高数据集分区的优良性起着重要的作用。实际上,在无监督学习中,在不需要用户给定参数的情况下检测合适的聚类解决方案仍然是一个挑战。本文在模糊聚类方法FN-DBSCAN(基于模糊邻域密度的含噪声应用空间聚类)的基础上,提出了一种高效的聚类方法AF-DBSCAN (Automatic Fuzzy DBSCAN)。该方法的主要思想是通过利用k近邻图的优点来弥补FN-DBSCAN的局限性,以确定输入参数值。事实上,AF-DBSCAN避免了非实验用户在估计难以猜测的输入参数、最小邻域隶属度阈值≥1和最小邻域集基数≥2时的人工干预,从而可以更合理地确定它们。通过这种方式,整个集群过程可以完全自动化。在真实医疗数据集上进行的仿真实验表明,AF-DBSCAN即使在高维数据集上也是有效的,并且表明该方法优于经典方法,因为它提供了更好的聚类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AF-DBSCAN: An unsupervised Automatic Fuzzy Clustering method based on DBSCAN approach
Automatic clustering problems play an important role to ameliorate the goodness of the data set's partitioning. Actually, the requirement to detect the suitable clustering solution without need for user-given parameters still remain challenging in unsupervised learning. This paper proposes an efficient and effective clustering method, named AF-DBSCAN (Automatic Fuzzy DBSCAN) based on the fuzzy clustering method FN-DBSCAN (Fuzzy Neighborhood Density-Based Spatial Clustering of Applications with Noise). The main idea of the proposed method is to cover the limitations of FN-DBSCAN by exploiting the benefits of k-neighbors plot, in purpose to determine the input parameter values. In fact, AF-DBSCAN avoids the manual intervention of non-experimental users in estimating the input parameters, the minimal threshold of neighborhood membership degree ∊1 and the minimal neighborhood set cardinality ∊2, which are hard to guess, and so permits to determine them more reasonably. In such way, the whole clustering process can be fully automated. Simulation experiments, carried out on a real medical data set, highlighted the AF-DBSCAN's effectiveness even for high-dimensions data sets, and showed that the proposed method outperformed the classical method since it provides a better clustering accuracy.
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