A topographical nonnegative matrix factorization algorithm

Nicoleta Rogovschi, Lazhar Labiod, M. Nadif
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引用次数: 2

Abstract

We explore in this paper a novel topological organization algorithm for data clustering and visualization named TPNMF. It leads to a clustering of the data, as well as the projection of the clusters on a two-dimensional grid while preserving the topological order of the initial data. The proposed algorithm is based on a NMF (Nonnegative Matrix Factorization) formalism using a neighborhood function which take into account the topological order of the data. TPNMF was validated on variant real datasets and the experimental results show a good quality of the topological ordering and homogenous clustering.
一种地形非负矩阵分解算法
本文探索了一种新的用于数据聚类和可视化的拓扑组织算法——TPNMF。它导致数据的聚类,以及在保持初始数据的拓扑顺序的同时在二维网格上的聚类投影。该算法基于NMF(非负矩阵分解)形式,使用考虑数据拓扑顺序的邻域函数。在不同的真实数据集上对TPNMF进行了验证,实验结果表明TPNMF具有良好的拓扑排序和同质聚类质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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