Sampling and inference for beta neutral-to-the-left models of sparse networks
Empirical evidence suggests that heavy-tailed degree distributions occurring in many real networks are well-approximated by power laws with exponents η that may take values either less than and greater than two. Models based on various forms of exchangeability are able to capture power laws with η &...
Auteurs principaux: | Bloem-Reddy, B, Foster, A, Mathieu, E, Teh, Y |
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Format: | Conference item |
Publié: |
AUAI Press
2018
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