Local learning integrating global structure for large scale semi-supervised classification

2012 
In this paper, we apply the clustering feature tree to large scale graph-based semi-supervised problems and propose a local learning integrating global structure algorithm. By organizing the unlabeled samples with a clustering feature tree, it allows us to decompose the unlabeled samples to a series of clusters (sub-trees) and learn them locally. In each training process on sub-trees, the clustering centers are chosen as frame points to keep the global structure of input samples, and propagate their labels to unlabeled data. We compare our method with several existing large scale algorithms on real-world datasets. The experiments show the scalability and accuracy improvement of our proposed approach. It can also handle millions of samples efficiently.
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