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A clustering algorithm with affine space-based boundary detection

机译:一种具有仿射空间的边界检测的聚类算法

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摘要

Clustering is an important technique in data mining. The innovative algorithm proposed in this paper obtains clusters by first identifying boundary points as opposed to existing methods that calculate core cluster points before expanding to the boundary points. To achieve this, an affine space-based boundary detection algorithm was employed to divide data points into cluster boundary and internal points. A connection matrix was then formed by establishing neighbor relationships between internal and boundary points to perform clustering. Our clustering algorithm with an affine space-based boundary detection algorithm accurately detected clusters in datasets with different densities, shapes, and sizes. The algorithm excelled at dealing with high-dimensional datasets.
机译:聚类是数据挖掘中的重要技术。 本文提出的创新算法通过首先识别边界点而获得了群集,而不是在扩展到边界点之前计算核心簇点的现有方法。 为此,采用基于仿射空间的边界检测算法将数据点划分为集群边界和内部点。 然后通过在内部和边界点之间建立以执行聚类的邻居关系来形成连接矩阵。 我们具有仿射空间的边界检测算法的聚类算法精确地检测到具有不同密度,形状和尺寸的数据集中的簇。 该算法卓越地处理高维数据集。

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