Application of Convolutional Neural Networks for Stellar Spectral Classification
Kaushal Sharma, Ajit Kembhavi, Aniruddha Kembhavi, T. Sivarani, Sheelu, Abraham, Kaustubh Vaghmare

TL;DR
This paper demonstrates that deep convolutional neural networks significantly improve the accuracy of stellar spectral classification over traditional machine learning methods, enabling finer spectral detail analysis and better generalization.
Contribution
It introduces a CNN-based automated approach for stellar spectral classification that outperforms previous shallow ML models in accuracy and detail detection.
Findings
CNN reduces spectral classification error to 1.23 sub-classes.
Deep learning captures finer spectral details for better parameter estimation.
Model successfully classifies spectra from SDSS database.
Abstract
Due to the ever-expanding volume of observed spectroscopic data from surveys such as SDSS and LAMOST, it has become important to apply artificial intelligence (AI) techniques for analysing stellar spectra to solve spectral classification and regression problems like the determination of stellar atmospheric parameters Teff, log g, [Fe/H]. We propose an automated approach for the classification of stellar spectra in the optical region using Convolutional Neural Networks. Traditional machine learning (ML) methods with "shallow" architecture (usually up to 2 hidden layers) have been trained for these purposes in the past. However, deep learning methods with a larger number of hidden layers allow the use of finer details in the spectrum which results in improved accuracy and better generalisation. Studying finer spectral signatures also enables us to determine accurate differential stellar…
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