Non-Negative Half-Space Clustering with Sparseness Constraints

L. Li, Jinyu Tian
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Abstract

This paper describes a novel clustering approach by revealing the non-negative half-space clustering with sparseness constraints (NHCS). Sparseness can make only few components of whole samples to be ‘active’. Especially, this method is more part-based compared to other matrix factorization methods, which is sensitive to the scale of the data. After obtaining the part-based structure, the samples can be grouped by spectral cutting techniques. It shows that our method has more robust with the increasing of the number of clusters. Both theoretical and experimental results show that NHCS performs better than other competitive algorithms on the two database CBCL and Reuters-21578.
稀疏约束下的非负半空间聚类
提出了一种基于稀疏约束的非负半空间聚类方法。稀疏性可以使整个样本中只有少数组件是“活跃的”。特别是,与其他矩阵分解方法相比,该方法更基于部分,对数据的规模敏感。在获得基于零件的结构后,可以通过光谱切割技术对样品进行分组。结果表明,随着聚类数量的增加,该方法具有更强的鲁棒性。理论和实验结果均表明,NHCS在CBCL和Reuters-21578两个数据库上的性能优于其他竞争算法。
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