Algebraic Statistics in Practice: Applications to Networks
Author(s)
Casanellas, Marta; Petrović, Sonja; Uhler, Caroline
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© 2020 Annual Review of Statistics and Its Application. All rights reserved. Algebraic statistics uses tools from algebra (especially from multilinear algebra, commutative algebra, and computational algebra), geometry, and combinatorics to provide insight into knotty problems in mathematical statistics. In this review, we illustrate this on three problems related to networks: network models for relational data, causal structure discovery, and phylogenetics. For each problem, we give an overview of recent results in algebraic statistics, with emphasis on the statistical achievements made possible by these tools and their practical relevance for applications to other scientific disciplines.
Date issued
2020Department
Massachusetts Institute of Technology. Department of Electrical Engineering and Computer ScienceJournal
Annual Review of Statistics and Its Application
Publisher
Annual Reviews