2024
DOI: 10.1093/rasti/rzae015
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The verification of periodicity with the use of recurrent neural networks

N Miller,
P W Lucas,
Y Sun
et al.

Abstract: The ability to automatically and robustly self-verify periodicity present in time-series astronomical data is becoming more important as data sets rapidly increase in size. The age of large astronomical surveys has rendered manual inspection of time-series data less practical. Previous efforts in generating a false alarm probability to verify the periodicity of stars have been aimed towards the analysis of a constructed periodogram. However, these methods feature correlations with features that do not pertain … Show more

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