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Combining labeled and unlabeled data with graph embedding

机译:将标记和未标记的数据与图形嵌入结合

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摘要

Learning the manifold structure of the data is a fundamental problem for pattern analysis. Utilizing labeled and unlabeled data, this paper presents a novel manifold learning algorithm, called semi-supervised aggregative graph embedding (SSAGE). In SSAGE, the graph of the original data is constructed and preserved according to a certain kind of similarity, which takes special consideration of both the local geometry information (of both labeled and unlabeled data) and the class information (of labeled data). The similarity has several good properties which help to discover the true intrinsic structure of the data, and make SSAGE a robust technique for inductive inference. Experimental results suggest that the proposed SSAGE approach provides a better representation of the data and achieves much higher recognition accuracies than Zhou's algorithm [D. Zhou, O. Bousquet, T.N. Lal, J. Weston, B. Scholkopf, Learning with local and global consistency, Advances in Neural Information Processing Systems, vol. 16, MIT Press, Cambridge, MA, 2003] and PCA.
机译:学习数据的流形结构是模式分析的基本问题。利用标记和未标记的数据,本文提出了一种新颖的流形学习算法,称为半监督聚合图嵌入(SSAGE)。在SSAGE中,原始数据的图是根据某种相似性构造和保存的,其中要特别考虑(标记和未标记数据的)局部几何信息和(标记数据的)类别信息。相似性具有几个良好的属性,可帮助发现数据的真实内在结构,并使SSAGE成为用于归纳推理的可靠技术。实验结果表明,与Zhou的算法相比,提出的SSAGE方法可以更好地表示数据,并获得更高的识别精度。 T.N. Zhou,O。Bousquet Lal,J. Weston,B. Scholkopf,《在本地和全球范围内保持一致的学习》,《神经信息处理系统的进展》,第1卷。 16,麻省理工学院出版社,马萨诸塞州剑桥,2003]和PCA。

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