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Spectral Clustering Trough Topological Learning for Large Datasets

机译:大型数据集的谱聚类槽式拓扑学习

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This paper introduces a new approach for clustering large datasets based on spectral clustering and topological unsupervised learning. Spectral clustering method needs to construct an adjacency matrix and calculate the eigen-decomposition of the corresponding Laplacian matrix [4] which are computational expensive and is not easy to apply on large-scale data sets. Contrarily, the topological learning (i.e. SOM method) allows a projection of the dataset in low dimensional spaces that make it easy to use for very large datasets. The prototypes matrix weighted by the neighbourhood function will be used in this work to reduce the computational time of the clustering algorithm and to add the topological information to the final clustering result. We illustrate the power of this method with several real datasets. The results show a good quality of clustering results and a higher speed.
机译:本文介绍了一种基于光谱聚类和拓扑无监督学习的大型数据聚类新方法。谱聚类方法需要构造一个邻接矩阵并计算相应拉普拉斯矩阵的特征分解[4],这在计算上是昂贵的,并且不容易应用于大规模数据集。相反,拓扑学习(即SOM方法)允许在低维空间中投影数据集,从而可以轻松地将其用于非常大的数据集。通过邻域函数加权的原型矩阵将用于这项工作中,以减少聚类算法的计算时间,并将拓扑信息添加到最终的聚类结果中。我们用几个真实的数据集说明了这种方法的强大功能。结果表明聚类结果的质量好并且速度更高。

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