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Models with hidden regular variation: Generation and detection
Author(s) -
Bikramjit Das,
Sidney I. Resnick
Publication year - 2015
Publication title -
stochastic systems
Language(s) - English
Resource type - Journals
ISSN - 1946-5238
DOI - 10.1214/14-ssy141
Subject(s) - variation (astronomy) , computer science , multivariate statistics , orthant , dimension (graph theory) , license , data mining , artificial intelligence , mathematics , machine learning , operating system , geometry , pure mathematics , physics , astrophysics
We review the notions of multivariate regular variation (MRV) and hidden regular variation (HRV) for distributions of random vectors and then discuss methods for generating models exhibiting both properties concentrating on the non-negative orthant in dimension two. Furthermore we suggest diagnostic techniques that detect these properties in multivariate data and indicate when models exhibiting both MRV and HRV are plausible fits for the data. We illustrate our techniques on simulated data, as well as two real Internet data sets.

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