Contextual Stochastic Block Models
Author(s)
Deshpande, Yash; Montanari, Andrea; Mossel, Elchanan; Sen, Subhabrata
DownloadPublished version (336.1Kb)
Terms of use
Metadata
Show full item recordAbstract
© 2018 Curran Associates Inc.All rights reserved. We provide the first information theoretic tight analysis for inference of latent community structure given a sparse graph along with high dimensional node covariates, correlated with the same latent communities. Our work bridges recent theoretical breakthroughs in the detection of latent community structure without nodes covariates and a large body of empirical work using diverse heuristics for combining node covariates with graphs for inference. The tightness of our analysis implies in particular, the information theoretical necessity of combining the different sources of information. Our analysis holds for networks of large degrees as well as for a Gaussian version of the model.
Date issued
2018Department
Massachusetts Institute of Technology. Department of MathematicsCitation
Deshpande, Yash, Montanari, Andrea, Mossel, Elchanan and Sen, Subhabrata. 2018. "Contextual Stochastic Block Models."
Version: Final published version