Graph Wavelets via Sparse Cuts: Extended Version

@inproceedings{Silva2016GraphWV,
  title={Graph Wavelets via Sparse Cuts: Extended Version},
  author={Arlei Silva and Xuan-Hong Dang and Prithwish Basu and Ambuj K. Singh and Ananthram Swami},
  year={2016}
}
Modeling information that resides on vertices of large graphs is a key problem in several real-life applications, ranging from social networks to the Internet-of-things. Signal Processing on Graphs and, in particular, graph wavelets can exploit the intrinsic smoothness of these datasets in order to represent them in a both compact and accurate manner. However, how to discover wavelet bases that capture the geometry of the data with respect to the signal as well as the graph structure remains an… CONTINUE READING
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