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An Improved Spectral Clustering Algorithm Based on Local Neighbors in Kernel Space

机译:核空间中基于局部邻居的改进谱聚类算法

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Similarity matrix is critical to the performance of spectral clustering. Mercer kernels have become popular largely due to its successes in applying kernel methods such as kernel PCA. A novel spectral clustering method is proposed based on local neighborhood in kernel space (SC-LNK), which assumes that each data point can be linearly reconstructed from its neighbors. The SC-LNK algorithm tries to project the data to a feature space by the Mercer kernel, and then learn a sparse matrix using linear reconstruction as the similarity graph for spectral clustering. Experiments have been performed on synthetic and real world data sets and have shown that spectral clustering based on linear reconstruction in kernel space outperforms the conventional spectral clustering and the other two algorithms, especially in real world data sets.
机译:相似度矩阵对于频谱聚类的性能至关重要。由于Mercer内核成功应用了诸如PCA内核之类的内核方法,因此已经变得流行。提出了一种基于核空间局部邻域(SC-LNK)的谱聚类方法,该方法假设每个数据点都可以从其邻域线性重构。 SC-LNK算法尝试通过Mercer内核将数据投影到特征空间,然后使用线性重构作为频谱聚类的相似度图来学习稀疏矩阵。在合成和真实世界的数据集上进行的实验表明,基于核空间线性重构的光谱聚类优于传统的光谱聚类和其他两种算法,特别是在真实世界的数据集中。

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