Recent Advances in Algebraic Geometry and Bayesian Statistics

11/18/2022
by   Sumio Watanabe, et al.
0

This article is a review of theoretical advances in the research field of algebraic geometry and Bayesian statistics in the last two decades. Many statistical models and learning machines which contain hierarchical structures or latent variables are called nonidentifiable, because the map from a parameter to a statistical model is not one-to-one. In nonidentifiable models, both the likelihood function and the posterior distribution have singularities in general, hence it was difficult to analyze their statistical properties. However, from the end of the 20th century, new theory and methodology based on algebraic geometry have been established which enables us to investigate such models and machines in the real world. In this article, the following results in recent advances are reported. First, we explain the framework of Bayesian statistics and introduce a new perspective from the birational geometry. Second, two mathematical solutions are derived based on algebraic geometry. An appropriate parameter space can be found by a resolution map, which makes the posterior distribution be normal crossing and the log likelihood ratio function be well-defined. Third, three applications to statistics are introduced. The posterior distribution is represented by the renormalized form, the asymptotic free energy is derived, and the universal formula among the generalization loss, the cross validation, and the information criterion is established. Two mathematical solutions and three applications to statistics based on algebraic geometry reported in this article are now being used in many practical fields in data science and artificial intelligence.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/11/2022

Mathematical Theory of Bayesian Statistics for Unknown Information Source

In statistical inference, uncertainty is unknown and all models are wron...
research
03/01/2021

General Bayesian L^2 calibration of mathematical models

A general Bayesian method for L^2 calibration of a mathematical model is...
research
08/31/2012

A Widely Applicable Bayesian Information Criterion

A statistical model or a learning machine is called regular if the map t...
research
07/25/2023

Likelihood Geometry of Determinantal Point Processes

We study determinantal point processes (DPP) through the lens of algebra...
research
12/09/2020

Likelihood Equations and Scattering Amplitudes

We relate scattering amplitudes in particle physics to maximum likelihoo...
research
10/19/2012

Stochastic complexity of Bayesian networks

Bayesian networks are now being used in enormous fields, for example, di...
research
12/10/2019

Modelling curvature of a bent paper leaf

In this article, we briefly describe various tools and approaches that a...

Please sign up or login with your details

Forgot password? Click here to reset