Machine Learning approach to muon spectroscopy analysis
T. Tula, G. M\"oller, J. Quintanilla, S. R. Giblin, A. D. Hillier, E., E. McCabe, S. Ramos, D. S. Barker, S. Gibson

TL;DR
This paper demonstrates that Principal Component Analysis, an unsupervised machine learning technique, effectively detects phase transitions in muon spectroscopy data without prior physical assumptions, offering an alternative analysis method.
Contribution
The study introduces PCA as a novel, assumption-free approach for analyzing muon spectroscopy data to identify phase transitions, improving flexibility over traditional methods.
Findings
PCA successfully detects phase transitions in muon spectroscopy data.
The method performs best with large datasets, regardless of material diversity.
PCA provides an alternative analysis tool without requiring prior physical knowledge.
Abstract
In recent years, Artificial Intelligence techniques have proved to be very successful when applied to problems in physical sciences. Here we apply an unsupervised Machine Learning (ML) algorithm called Principal Component Analysis (PCA) as a tool to analyse the data from muon spectroscopy experiments. Specifically, we apply the ML technique to detect phase transitions in various materials. The measured quantity in muon spectroscopy is an asymmetry function, which may hold information about the distribution of the intrinsic magnetic field in combination with the dynamics of the sample. Sharp changes of shape of asymmetry functions - measured at different temperatures - might indicate a phase transition. Existing methods of processing the muon spectroscopy data are based on regression analysis, but choosing the right fitting function requires knowledge about the underlying physics of the…
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Taxonomy
MethodsPrincipal Components Analysis
