Astromer 2
Cristobal Donoso-Oliva, Ignacio Becker, Pavlos Protopapas, Guillermo Cabrera-Vives, Martina C\'adiz-Leyton, Daniel Moreno-Cartagena

TL;DR
Astromer 2 is a self-supervised foundational model for light curve analysis that significantly improves embedding quality and classification performance over its predecessor, enabling more efficient astronomical data interpretation.
Contribution
We introduce Astromer 2, an improved self-supervised model for light curve embeddings, with enhanced performance and detailed empirical analysis demonstrating its effectiveness.
Findings
Astromer 2 outperforms Astromer 1 in all evaluated scenarios.
Embedding quality measured by F1 score shows significant improvement.
Achieves 15% higher F1 score on the ATLAS dataset.
Abstract
Foundational models have emerged as a powerful paradigm in deep learning field, leveraging their capacity to learn robust representations from large-scale datasets and effectively to diverse downstream applications such as classification. In this paper, we present Astromer 2 a foundational model specifically designed for extracting light curve embeddings. We introduce Astromer 2 as an enhanced iteration of our self-supervised model for light curve analysis. This paper highlights the advantages of its pre-trained embeddings, compares its performance with that of its predecessor, Astromer 1, and provides a detailed empirical analysis of its capabilities, offering deeper insights into the model's representations. Astromer 2 is pretrained on 1.5 million single-band light curves from the MACHO survey using a self-supervised learning task that predicts randomly masked observations within…
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Taxonomy
MethodsSoftmax · Attention Is All You Need
