LABIN: Balanced Min Cut for Large-Scale Data
Science Citation Index Expanded
西北工业大学
摘要
Although many spectral clustering algorithms have been proposed during the past decades, they are not scalable to large-scale data due to their high computational complexities. In this paper, we propose a novel spectral clustering method for large-scale data, namely, large-scale balanced min cut (LABIN). A new model is proposed to extend the self-balanced min-cut (SBMC) model with the anchor-based strategy and a fast spectral rotation with linear time complexity is proposed to solve the new model. Extensive experimental results show the superior performance of our proposed method in comparison with the state-of-the-art methods including SBMC.
关键词
Computational modeling Clustering algorithms Computational complexity Data models Clustering methods Laplace equations Learning systems Clustering graph cut large-scale data spectral clustering
