Systematic errors in the maximum likelihood regression of Poisson count data: introducing the overdispersed chi-square distribution

02/08/2023
by   M. Bonamente, et al.
0

This paper presents a new method to estimate systematic errors in the maximum-likelihood regression of count data. The method is applicable in particular to X-ray spectra in situations where the Poisson log-likelihood, or the Cash goodness-of-fit statistic, indicate a poor fit that is attributable to overdispersion of the data. Overdispersion in Poisson data is treated as an intrinsic model variance that can be estimated from the best-fit model, using the maximum-likelihood Cmin statistic. The paper also studies the effects of such systematic errors on the Delta C likelihood-ratio statistic, which can be used to test for the presence of a nested model component in the regression of Poisson count data. The paper introduces an overdispersed chi-square distribution that results from the convolution of a chi-square distribution that models the usual Delta C statistic, and a zero-mean Gaussian that models the overdispersion in the data. This is proposed as the distribution of choice for the Delta C statistic in the presence of systematic errors. The methods presented in this paper are applied to XMM-Newton data of the quasar 1ES 1553+113 that were used to detect absorption lines from an intervening warm-hot intergalactic medium (WHIM). This case study illustrates how systematic errors can be estimated from the data, and their effect on the detection of a nested component, such as an absorption line, with the Delta C statistic.

READ FULL TEXT
research
09/16/2020

A semi-analytical solution to the maximum likelihood fit of Poisson data to a linear model using the Cash statistic

[ABRIDGED] The Cash statistic, also known as the C stat, is commonly use...
research
06/28/2023

Linear regression for Poisson count data: A new semi-analytical method with applications to COVID-19 events

This paper presents the application of a new semi-analytical method of l...
research
03/28/2018

Improving likelihood-based inference in control rate regression

Control rate regression is a diffuse approach to account for heterogenei...
research
01/04/2023

A new over-dispersed count model

A new two-parameter discrete distribution, namely the PoiG distribution ...
research
09/19/2023

Testable Likelihoods for Beyond-the-Standard Model Fits

Studying potential BSM effects at the precision frontier requires accura...
research
10/25/2021

Poisson-modification of the Quasi Lindley distribution and its zero modification for over-dispersed count data

In this paper, an alternative mixed Poisson distribution is proposed by ...
research
01/18/2021

Bias Reduction as a Remedy to the Consequences of Infinite Estimates in Poisson and Tobit Regression

Data separation is a well-studied phenomenon that can cause problems in ...

Please sign up or login with your details

Forgot password? Click here to reset