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Autores principales: Ma, Bangzheng, Dugas, Katherine, Luk, Kam-Biu, Ochoa-Ricoux, Juan Pedro, Roskovec, Bedřich, Wu, Qun
Formato: Preprint
Publicado: 2026
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Acceso en línea:https://arxiv.org/abs/2604.06704
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author Ma, Bangzheng
Dugas, Katherine
Luk, Kam-Biu
Ochoa-Ricoux, Juan Pedro
Roskovec, Bedřich
Wu, Qun
author_facet Ma, Bangzheng
Dugas, Katherine
Luk, Kam-Biu
Ochoa-Ricoux, Juan Pedro
Roskovec, Bedřich
Wu, Qun
contents The underground rates of cosmic-ray muons exhibit seasonal variations correlated with effective atmospheric temperature, quantified via a single coefficient. We compare two analysis methods for studying the correlation: the standard Unbinned Method, where all rate-temperature data points are fit simultaneously via linear regression, and the Binned Method, where data points with similar temperatures are first grouped into bins before fitting. We find that while both methods are unbiased in the limit of negligible temperature uncertainties, the Binned Method develops significant bias when temperature uncertainties are present, due to binning-induced distortions. In contrast, the Unbinned Method remains robust if the uncertainties are accurately known. To address the widely encountered issue of imprecise uncertainty estimation, we propose a novel procedure that assesses correlation stability by varying the time intervals and their assigned uncertainties. This approach resolves methodological tensions in studies of seasonal modulation of the muon rate and provides a practical framework for robust correlation estimation under real-world conditions.
format Preprint
id arxiv_https___arxiv_org_abs_2604_06704
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Biases in the Determination of Correlations Between Underground Muon Flux and Atmospheric Temperature
Ma, Bangzheng
Dugas, Katherine
Luk, Kam-Biu
Ochoa-Ricoux, Juan Pedro
Roskovec, Bedřich
Wu, Qun
High Energy Physics - Experiment
Data Analysis, Statistics and Probability
The underground rates of cosmic-ray muons exhibit seasonal variations correlated with effective atmospheric temperature, quantified via a single coefficient. We compare two analysis methods for studying the correlation: the standard Unbinned Method, where all rate-temperature data points are fit simultaneously via linear regression, and the Binned Method, where data points with similar temperatures are first grouped into bins before fitting. We find that while both methods are unbiased in the limit of negligible temperature uncertainties, the Binned Method develops significant bias when temperature uncertainties are present, due to binning-induced distortions. In contrast, the Unbinned Method remains robust if the uncertainties are accurately known. To address the widely encountered issue of imprecise uncertainty estimation, we propose a novel procedure that assesses correlation stability by varying the time intervals and their assigned uncertainties. This approach resolves methodological tensions in studies of seasonal modulation of the muon rate and provides a practical framework for robust correlation estimation under real-world conditions.
title Biases in the Determination of Correlations Between Underground Muon Flux and Atmospheric Temperature
topic High Energy Physics - Experiment
Data Analysis, Statistics and Probability
url https://arxiv.org/abs/2604.06704