Deep Learning and LLM-based Methods Applied to Stellar Lightcurve Classification
Yu-Yang Li, Yu Bai, Cunshi Wang, Mengwei Qu, Ziteng Lu, Roberto Soria,, Jifeng Liu

TL;DR
This paper evaluates deep learning and large language model techniques for classifying stellar light curves, achieving high accuracy and demonstrating the potential of multimodal models in astronomy.
Contribution
It introduces a comprehensive comparison of deep learning architectures and LLM-based models for stellar light curve classification, highlighting novel multimodal models and optimization strategies.
Findings
Swin Transformer achieves 99% accuracy in classification.
StarWhisper LightCurve series attains around 90% accuracy with minimal feature engineering.
Reduced observation duration and sampling points have limited impact on accuracy.
Abstract
Light curves serve as a valuable source of information on stellar formation and evolution. With the rapid advancement of machine learning techniques, it can be effectively processed to extract astronomical patterns and information. In this study, we present a comprehensive evaluation of deep-learning and large language model (LLM) based models for the automatic classification of variable star light curves, based on large datasets from the Kepler and K2 missions. Special emphasis is placed on Cepheids, RR Lyrae, and eclipsing binaries, examining the influence of observational cadence and phase distribution on classification precision. Employing AutoDL optimization, we achieve striking performance with the 1D-Convolution+BiLSTM architecture and the Swin Transformer, hitting accuracies of 94\% and 99\% correspondingly, with the latter demonstrating a notable 83\% accuracy in discerning the…
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Taxonomy
TopicsAstronomical Observations and Instrumentation · Astronomy and Astrophysical Research
MethodsAttention Is All You Need · Dropout · Adam · Position-Wise Feed-Forward Layer · Linear Layer · Layer Normalization · Byte Pair Encoding · Absolute Position Encodings · Multi-Head Attention · Dense Connections
