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New directions in algebraic statistics: Three challenges from 2023

21 February 2024
Yulia Alexandr
Miles Bakenhus
Mark Curiel
Sameer K. Deshpande
Elizabeth Gross
Yuqi Gu
Max Hill
Joseph Johnson
Bryson Kagy
Vishesh Karwa
Jiayi Li
Hanbaek Lyu
Sonja Petrović
Jose Israel Rodriguez
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Abstract

In the last quarter of a century, algebraic statistics has established itself as an expanding field which uses multilinear algebra, commutative algebra, computational algebra, geometry, and combinatorics to tackle problems in mathematical statistics. These developments have found applications in a growing number of areas, including biology, neuroscience, economics, and social sciences. Naturally, new connections continue to be made with other areas of mathematics and statistics. This paper outlines three such connections: to statistical models used in educational testing, to a classification problem for a family of nonparametric regression models, and to phase transition phenomena under uniform sampling of contingency tables. We illustrate the motivating problems, each of which is for algebraic statistics a new direction, and demonstrate an enhancement of related methodologies.

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