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Main Author: Hoegele, Wolfgang
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.20152
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author Hoegele, Wolfgang
author_facet Hoegele, Wolfgang
contents The goal of this paper is to demonstrate the general modeling and practical simulation of random equations with mixture model parameter random variables. Random equations, understood as stationary (non-dynamical) equations with parameters as random variables, have a long history and a broad range of applications. The specific novelty of this explorative study lies on the demonstration of the combinatorial complexity of these equations and their solutions with mixture model parameters. In a Bayesian argumentation framework, we derive a likelihood function and posterior density of approximate solutions while avoiding significant restrictions about the type of nonlinearity of the equation or mixture models, and demonstrate their numerically efficient implementation for the applied researcher. In the results section, we are specifically focusing on expressive example simulations showcasing the combinatorial potential of random linear equation systems and nonlinear systems of random conic section equations. Introductory applications to portfolio optimization, stochastic control and random matrix theory are provided in order to show the wide applicability of the presented methodology.
format Preprint
id arxiv_https___arxiv_org_abs_2403_20152
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Combinatorial Potential of Random Equations with Mixture Models: Modeling and Simulation
Hoegele, Wolfgang
Computation
Numerical Analysis
The goal of this paper is to demonstrate the general modeling and practical simulation of random equations with mixture model parameter random variables. Random equations, understood as stationary (non-dynamical) equations with parameters as random variables, have a long history and a broad range of applications. The specific novelty of this explorative study lies on the demonstration of the combinatorial complexity of these equations and their solutions with mixture model parameters. In a Bayesian argumentation framework, we derive a likelihood function and posterior density of approximate solutions while avoiding significant restrictions about the type of nonlinearity of the equation or mixture models, and demonstrate their numerically efficient implementation for the applied researcher. In the results section, we are specifically focusing on expressive example simulations showcasing the combinatorial potential of random linear equation systems and nonlinear systems of random conic section equations. Introductory applications to portfolio optimization, stochastic control and random matrix theory are provided in order to show the wide applicability of the presented methodology.
title Combinatorial Potential of Random Equations with Mixture Models: Modeling and Simulation
topic Computation
Numerical Analysis
url https://arxiv.org/abs/2403.20152