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Discriminate primary gammas (signal) from the images of hadronic showers by cosmic rays in the upper atmosphere (background) with machine learning

Seyed Matin Malakouti

2023Physica Scripta15 citationsDOIOpen Access PDF

Abstract

Abstract The grid search approach was used in this article to tune the hyperparameters of the Light Gradient Boosting Machine, Random Forest, Gradient Boosting, Extra Tree, Ada Boost, and Linear Discriminant Analysis algorithms for Gamma and Hadron classification. The findings of ROC and Precision-Recall curves were also discussed to assess the performance of algorithms in the Gamma and Hadron classification. with the light gradient boosting machine, it took 33 s to get an AUC value of 0.94 for the Gamma and Hardon classification. Also, the results of the Random Forest, the light gradient boosting machine, and the Linear Discriminant Analysis were all about the same.

Topics & Concepts

Gradient boostingHyperparameterLinear discriminant analysisBoosting (machine learning)Random forestArtificial intelligenceDiscriminantPhysicsHadronPattern recognition (psychology)Alternating decision treeMachine learningHyperparameter optimizationDecision treeCOSMIC cancer databaseComputer scienceParticle physicsAlgorithmSupport vector machineAstrophysicsDecision tree learningIncremental decision treeGamma-ray bursts and supernovaeAstrophysics and Cosmic PhenomenaPulsars and Gravitational Waves Research
Discriminate primary gammas (signal) from the images of hadronic showers by cosmic rays in the upper atmosphere (background) with machine learning | Litcius