作者
Venkatesan N Ekambaram, Giulia Fanti, Babak Ayazifar, Kannan Ramchandran
发表日期
2013/12/3
研讨会论文
2013 IEEE Global Conference on Signal and Information Processing
页码范围
423-426
出版商
IEEE
简介
Graph semi-supervised learning (GSSL) is a technique that uses a combination of labeled and unlabeled nodes on a graph to determine a classifier for new, incoming data. This problem can be analyzed through the lens of graph signal processing. In particular, the penalty functions used in the optimization formulation of standard GSSL algorithms can be interpreted as appropriately-defined filters in the Graph Fourier domain. We propose a wavelet-regularized semi-supervised learning algorithm using suitably-defined spline-like graph wavelets. These wavelets are critically-sampled, perfect-reconstruction basis representations, in contrast to much of the existing work proposing overcomplete representations. Critical sampling is essential for controlling the complexity in applications dealing with large scale datasets. We are also interested in understanding when wavelet-regularized approaches perform better than …
引用总数
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VN Ekambaram, G Fanti, B Ayazifar, K Ramchandran - 2013 IEEE Global Conference on Signal and …, 2013