Analysis of the TAIGA-HiSCORE Data Using the Latent Space of Autoencoders
Yu.Yu. Dubenskaya, S.P. Polyakov, A.P. Kryukov, A.P. Demichev, E.O. Gres, E.B. Postnikov, A.Yu. Razumov, P.A. Volchugov, and D.P. Zhurov

TL;DR
This paper introduces a novel autoencoder-based method to analyze TAIGA-HiSCORE data, replacing traditional auxiliary parameters with latent space features to improve primary particle energy reconstruction accuracy.
Contribution
The study demonstrates the effectiveness of using autoencoder latent space parameters for EAS analysis, enabling better data integration and physics preservation without prior assumptions.
Findings
AE latent space preserves essential physics information.
Energy reconstruction accuracy is satisfactory with AE features.
Comparison shows improvement over conventional auxiliary parameters.
Abstract
The aim of extensive air shower (EAS) analysis is to reconstruct the physical parameters of the primary particle that initiated the shower. The TAIGA experiment is a hybrid detector system that combines several imaging atmospheric Cherenkov telescopes (IACTs) and an array of non-imaging Cherenkov detectors (TAIGA-HiSCORE) for EAS detection. Because the signals recorded by different detector types differ in physical nature, the direct merging of data is unfeasible, which complicates multimodal analysis. Currently, to analyze data from the IACTs and TAIGA-HiSCORE, a set of auxiliary parameters specific to each detector type is calculated from the recorded signals. These parameters are chosen empirically, so there is no certainty that they retain all important information and are the best suited for the respective problems. We propose to use autoencoders (AE) for the analysis of TAIGA…
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Taxonomy
TopicsAstrophysics and Cosmic Phenomena · Radiation Detection and Scintillator Technologies · Neutrino Physics Research
