Identifying Variable Stars from Kepler Data Using Machine Learning
J. Adassuriya,
J. A. N. S. S. Jayasinghe and
K. P. S. C. Jayaratne
Additional contact information
J. Adassuriya: Arthur C Clarke Institute, Sri Lanka
J. A. N. S. S. Jayasinghe: University of Maryland Baltimore County, USA
K. P. S. C. Jayaratne: University of Colombo, Sri Lanka
European Journal of Applied Physics, 2021, vol. 3, issue 4, 32-37
Abstract:
Machine learning algorithms play an impressive role in modern technology and address automation problems in many fields as these techniques can be used to identify features with high sensitivity, which humans or other programming techniques aren’t capable of detecting. In addition, the growth of the availability of the data demands the need of faster, accurate, and more reliable automating methods of extracting information, reforming, and preprocessing, and analyzing them in the world of science. The development of machine learning techniques to automate complex manual programs is a time relevant research in astrophysics as it’s a field where, experts are dealing with large sets of data every day. In this study, an automated classification was built for 6 types of star classes Beta Cephei, Delta Scuti, Gamma Doradus, Red Giants, RR Lyrae and RV Tarui with widely varying properties, features extracted from training dataset of stellar light curves obtained from Kepler mission. The Random Forest classification model was used as the Machine Learning model and both periodic and non-periodic features extracted from light curves were used as the inputs to the model. Our implementation achieved an accuracy of 86.5%, an average precision level of 0.86, an average recall value of 0.87, and average F1-Score of 0.86 for the testing dataset obtained from the Kepler mission.
Keywords: Machine Learning; Random Forest; Short Period Variable Stars (search for similar items in EconPapers)
Date: 2021
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Persistent link: https://EconPapers.repec.org/RePEc:epw:physic:v:3:y:2021:i:4:id:11093
DOI: 10.24018/ejphysics.2021.3.4.93
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