English

Interpretable Boosted Decision Tree Analysis for the Majorana Demonstrator

Data Analysis, Statistics and Probability 2024-08-23 v5 Machine Learning Nuclear Experiment

Abstract

The Majorana Demonstrator is a leading experiment searching for neutrinoless double-beta decay with high purity germanium detectors (HPGe). Machine learning provides a new way to maximize the amount of information provided by these detectors, but the data-driven nature makes it less interpretable compared to traditional analysis. An interpretability study reveals the machine's decision-making logic, allowing us to learn from the machine to feedback to the traditional analysis. In this work, we have presented the first machine learning analysis of the data from the Majorana Demonstrator; this is also the first interpretable machine learning analysis of any germanium detector experiment. Two gradient boosted decision tree models are trained to learn from the data, and a game-theory-based model interpretability study is conducted to understand the origin of the classification power. By learning from data, this analysis recognizes the correlations among reconstruction parameters to further enhance the background rejection performance. By learning from the machine, this analysis reveals the importance of new background categories to reciprocally benefit the standard Majorana analysis. This model is highly compatible with next-generation germanium detector experiments like LEGEND since it can be simultaneously trained on a large number of detectors.

Keywords

Cite

@article{arxiv.2207.10710,
  title  = {Interpretable Boosted Decision Tree Analysis for the Majorana Demonstrator},
  author = {I. J. Arnquist and F. T. Avignone and A. S. Barabash and C. J. Barton and K. H. Bhimani and E. Blalock and B. Bos and M. Busch and M. Buuck and T. S. Caldwell and Y -D. Chan and C. D. Christofferson and P. -H. Chu and M. L. Clark and C. Cuesta and J. A. Detwiler and Yu. Efremenko and S. R. Elliott and G. K. Giovanetti and M. P. Green and J. Gruszko and I. S. Guinn and V. E. Guiseppe and C. R. Haufe and R. Henning and D. Hervas Aguilar and E. W. Hoppe and A. Hostiuc and M. F. Kidd and I. Kim and R. T. Kouzes and T. E. Lannen and A. Li and J. M. Lopez-Castano and E. L. Martin and R. D. Martin and R. Massarczyk and S. J. Meijer and T. K. Oli and G. Othman and L. S. Paudel and W. Pettus and A. W. P. Poon and D. C. Radford and A. L. Reine and K. Rielage and N. W. Ruof and D. C. Schaper and D. Tedeschi and R. L. Varner and S. Vasilyev and J. F. Wilkerson and C. Wiseman and W. Xu and C. -H. Yu},
  journal= {arXiv preprint arXiv:2207.10710},
  year   = {2024}
}

Comments

13 pages, 9 figures

R2 v1 2026-06-25T01:07:47.222Z