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arxiv: 2308.06404 · v1 · pith:NYFBYR4X · submitted 2023-08-11 · astro-ph.IM

Positional Encodings for Light Curve Transformers: Playing with Positions and Attention

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classification astro-ph.IM
keywords attentiontransformercurvedatasetsencodingslightpositionalproposed
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We conducted empirical experiments to assess the transferability of a light curve transformer to datasets with different cadences and magnitude distributions using various positional encodings (PEs). We proposed a new approach to incorporate the temporal information directly to the output of the last attention layer. Our results indicated that using trainable PEs lead to significant improvements in the transformer performances and training times. Our proposed PE on attention can be trained faster than the traditional non-trainable PE transformer while achieving competitive results when transfered to other datasets.

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Cited by 1 Pith paper

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  1. StarCLR: Contrastive Learning Representation for Astronomical Light Curves

    astro-ph.SR 2026-04 conditional novelty 6.0

    StarCLR pretrains on TESS light curves via contrastive learning on overlapping subsequences and improves variable star classification F1 scores over scratch-trained models when fine-tuned on TESS, ZTF, and Gaia.