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Series:   SemStat Elements

Topics at the Frontier of Statistics and Network Analysis

(Re)Visiting the Foundations

Published online by Cambridge University Press:  06 June 2017

Eric D. Kolaczyk
Affiliation:
Boston University

Summary

This snapshot of the current frontier of statistics and network analysis focuses on the foundational topics of modeling, sampling, and design. Primarily for graduate students and researchers in statistics and closely related fields, emphasis is not only on what has been done, but on what remains to be done.
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Online ISBN: 9781108290159
Publisher: Cambridge University Press
Print publication: 10 August 2017

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