# Inequalities and Approximations for Fisher Information in the Presence   of Nuisance Parameters

**Authors:** Eric Clarkson

arXiv: 1902.04607 · 2019-02-14

## TL;DR

This paper investigates how nuisance parameters affect Fisher Information in imaging systems, deriving inequalities and approximations to better understand the impact of uninteresting parameters on parameter estimation accuracy.

## Contribution

The paper introduces new inequalities and approximation methods for Fisher Information considering nuisance parameters in imaging models.

## Key findings

- Derived bounds for Fisher Information with nuisance parameters
- Proposed approximation techniques for Fisher Information in complex models
- Analyzed the impact of nuisance parameters on estimation accuracy

## Abstract

Many imaging systems are used to estimate a vector of parameters associated with the object being imaged. In many cases there are other parameters in the model for the imaging data that are not of interest for the task at hand. We refer to these as nuisance parameters and use them to form the components of the nuisance parameter vector. If we have a prior probability distribution function (PDF) for the nuisance parameter vector, then we may mariginalize over the nuisance parameters to produce a conditional PDF for the data that only depends on the parameters of interest. We will examine this approach to develop inequalities and approximations for the FIM when the data is affected by nuisance parameters.

## Full text

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## References

12 references — full list in the complete paper: https://tomesphere.com/paper/1902.04607/full.md

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Source: https://tomesphere.com/paper/1902.04607