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Model-independent searches of new physics in DARWIN with deep learning

Title: Model-independent searches of new physics in DARWIN with deep learning
Authors: XLZD Collaboration; Aalbers, J.; Abe, K.; Adrover, M.; Maouloud, S. Ahmed; Althueser, L.; Amaral, D. W. P.; Andrieu, B.; Angelino, E.; Antón Martin, D.; Antunovic, B.; Aprile, E.; Babicz, M.; Bajpai, D.; Balzer, M.; Barberio, E.; Baudis, L.; Bazyk, M.; Bell, N. F.; Bellagamba, L.; Biondi, R.; Biondi, Y.; Bismark, A.; Boehm, C.; Boese, K.; Braun, R.; Breskin, A.; Brommer, S.; Brown, A.; Bruni, G.; Budnik, R.; Cai, C.; Capelli, C.; Chauvin, A.; Chavez, A. P. Cimental; Colijn, A. P.; Conrad, J.; Cuenca-García, J. J.; D’Andrea, V.; Garcia, L. C. Daniel; Decowski, M. P.; Deisting, A.; Donato, C. Di; Gangi, P. Di; Diglio, S.; Doerenkamp, M.; Drexlin, G.; Eitel, K.; Elykov, A.; Engel, R.; Ferella, A. D.; Ferrari, C.; Fischer, H.; Flehmke, T.; Flierman, M.; Fujikawa, K.; Fulgione, W.; Fuselli, C.; Gaemers, P.; Gaior, R.; Galloway, M.; Gao, F.; Garroum, N.; Giacomobono, R.; Girard, F.; Glade-Beucke, R.; Glück, F.; Grandi, L.; Grigat, J.; Größle, R.; Guan, H.; Guida, M.; Gyorgy, P.; Hammann, R.; Hannen, V.; Hansmann-Menzemer, S.; Hargittai, N.; Higuera, A.; Hils, C.; Hiraoka, K.; Hoetzsch, L.; Hood, N. F.; Iacovacci, M.; Itow, Y.; Jakob, J.; James, R. S.; Joerg, F.; Kahlert, F.; Kaminaga, Y.; Kara, M.; Kavrigin, P.; Kazama, S.; Keller, M.; Kharbanda, P.; Kilminster, B.; Kleifges, M.; Klute, M.; Kobayashi, M.; Koke, D.; Kopec, A.; Krosigk, B. von; Kuger, F.; LaCascio, L.; Landsman, H.; Lang, R. F.; Levinson, L.; Li, I.; Li, A.; Li, S.; Liang, S.; Liang, Z.; Lin, Y.-T.; Lindemann, S.; Lindner, M.; Liu, K.; Loizeau, J.; Lombardi, F.; Long, J.; Lopes, J. A. M.; Lucchetti, G. M.; Luce, T.; Ma, Y.; Macolino, C.; Mahlstedt, J.; Maier, B.; Mancuso, A.; Manenti, L.; Marignetti, F.; Martens, K.; Masbou, J.; Masson, E.; Mastroianni, S.; Melchiorre, A.; Menéndez, J.; Messina, M.; Milosovic, B.; Milutinovic, S.; Miuchi, K.; Miyata, R.; Molinario, A.; Monteiro, C. M. B.; Morå, K.; Moriyama, S.; Morteau, E.; Mosbacher, Y.; Müller, J.; Murra, M.; Newstead, J. L.; Ni, K.; O’Hare, C.; Oberlack, U.; Obradovic, M.; Ostrowskiy, I.; Ouahada, S.; Paetsch, B.; Pan, Y.; Pandurovic, M.; Pellegrini, Q.; Peres, R.; Piastra, F.; Pienaar, J.; Pierre, M.; Plante, G.; Pollmann, T. R.; Principe, L.; Qi, J.; Qiao, K.; Qin, J.; Rajado, M.; García, D. Ramírez; Ravindran, A.; Razeto, A.; Sanchez, L.; Sanchez-Lucas, P.; Sartorelli, G.; Scaffidi, A.; Schreiner, J.; Schulte, P.; Eißing, H. Schulze; Schumann, M.; Schwenck, A.; Lavina, L. Scotto; Selvi, M.; Semeria, F.; Shagin, P.; Sharma, S.; Shen, W.; Shi, S. Y.; Shimada, T.; Simgen, H.; Singh, R.; Solmaz, M.; Stanley, O.; Steidl, M.; Stevens, A.; Takeda, A.; Tan, P.-L.; Thers, D.; Thümmler, T.; Tönnies, F.; Toschi, F.; Trinchero, G.; Trotta, R.; Tunnell, C. D.; Urquijo, P.; Utoyama, M.; Valerius, K.; Vecchi, S.; Vetter, S.; Volta, G.; Vorkapic, D.; Wang, W.; Weerman, K. M.; Weinheimer, C.; Weiss, M.; Wenz, D.; Wilson, M.; Wittweg, C.; Wolf, J.; Wu, V. H. S.; Wüstling, S.; Wurm, M.; Xing, Y.; Xu, D.; Xu, Z.; Yamashita, M.; Yang, L.; Ye, J.; Yuan, L.; Zavattini, G.; Zhong, M.; Zuber, K.
Source: The European Physical Journal C, 86 (3), Art.Nr: 312 ; ISSN: 1434-6052
Publisher Information: Springer-Verlag
Publication Year: 2026
Collection: KITopen (Karlsruhe Institute of Technologie)
Subject Terms: ddc:530; Physics; info:eu-repo/classification/ddc/530
Description: We present a deep learning pipeline to perform a model-independent, likelihood-free search for anomalous (i.e., non-background) events in the proposed next-generation multi-ton scale liquid xenon-based direct detection experiment, DARWIN. We train an anomaly detector comprising a variational autoencoder (VAE) and a classifier on high-dimensional simulated detector response data and construct a 1D anomaly score to reject the background-only hypothesis in the presence of an excess of non-background-like events. We use simulated validation data to determine the power of the method to reject the background-only hypothesis in the presence of a WIMP dark matter signal, without any model-dependent assumption about the nature of the signal. We show that our neural networks learn relevant features of the events from low-level, high-dimensional detector outputs, avoiding lossy and computationally expensive compression into lower-dimensional observables. Our approach is complementary to the usual likelihood-based analysis, in that it reduces the reliance on many of the corrections and cuts that are traditionally part of the analysis chain, with the potential of achieving higher accuracy and significant reduction of analysis time. We envisage the methodology presented in this work augmenting or complementing likelihood-based and other data-driven methods currently utilized in the DARWIN (and in the future, XLZD) analysis pipeline.
Document Type: article in journal/newspaper
File Description: application/pdf
Language: English
ISBN: 978-1-00-019172-1; 1-00-019172-9
ISSN: 1434-6052
Relation: info:eu-repo/semantics/altIdentifier/issn/1434-6052; https://publikationen.bibliothek.kit.edu/1000191729; https://publikationen.bibliothek.kit.edu/1000191729/177756050; https://doi.org/10.5445/IR/1000191729
DOI: 10.5445/IR/1000191729
Availability: https://publikationen.bibliothek.kit.edu/1000191729; https://publikationen.bibliothek.kit.edu/1000191729/177756050; https://doi.org/10.5445/IR/1000191729
Rights: https://creativecommons.org/licenses/by/4.0/deed.de ; info:eu-repo/semantics/openAccess
Accession Number: edsbas.B6246233
Database: BASE