2023
DOI: 10.3390/a16060293
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Random forest Algorithm for the Classification of Spectral Data of Astronomical Objects

Abstract: Over time, human beings have built increasingly large astronomical observatories to increase the number of discoveries related to celestial objects. However, the amount of collected elements far exceeds the human capacity to analyze findings without help. For this reason, researchers must now turn to machine learning to analyze such data, identifying and classifying transient objects or events within extensive observations of the firmament. Algorithms from the family of random forests (an ensemble of decision … Show more

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