知识驱动的ART聚类算法

Zhaoyang Sun, L. Mak, K. Mao, W. Tang, Ying Liu, Kuitong Xian, Zhimin Wang, Y. Sui
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引用次数: 2

摘要

在诸如目标检测之类的应用中,通常可以获得感测数据的领域知识。在本文中,我们将可用的领域知识纳入聚类过程,开发了一种基于知识驱动的Mahalanobis距离的ART(自适应共振理论)聚类算法。知识驱动算法的优势在于可以自动确定聚类的数量,提高聚类结果。在4个人工数据集上验证了新算法的有效性。此外,该算法已被应用于我们的认知启发的目标检测和分类系统中,该系统可以获得已知的目标库和特征或属性的离散度。
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A knowledge-driven ART clustering algorithm
In applications such as target detection, domain knowledge of sensed data is often available. In this paper, we incorporate the available domain knowledge into clustering process and develop a knowledge-driven Mahalanobis distance-based ART (adaptive resonance theory) clustering algorithm. The strength of the knowledge-driven algorithm is that it can automatically determine the number of clusters with improved clustering results. The validity of the new algorithm has been verified on four artificial datasets. In addition, the algorithm has been adopted in our cognition-inspired target detection and classification system, where known target library and dispersion of feature or attributes are available.
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