RAVEN: RAnking And Validation Of ExoplaNets

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RAVEN: RAnking And Validation Of ExoplaNets

The result of applying the trained Planet-FP SOMs on their respective training data. The plots showcase the position of each training event on the SOM pixel map with some added random scatter up to 0.5 from the position to enhance clarity. The synthetic planet events are plotted in green and each respectiveFPeventinorange.The plots highlight the clustering of the similarly shaped events and thus the effectiveness of each SOMind istinguishing between the Planetand FP candidates. As expected, the SOM is highly effective for EB based FP scenarios and increasingly less effective for diluted planet scenarios. — astro-ph.EP

We present RAVEN, a newly developed vetting and validation pipeline for TESS exoplanet candidates.

The pipeline employs a Bayesian framework to derive the posterior probability of a candidate being a planet against a set of False Positive (FP) scenarios, through the use of a Gradient Boosted Decision Tree and a Gaussian Process classifier, trained on comprehensive synthetic training sets of simulated planets and 8 astrophysical FP scenarios injected into TESS lightcurves.

These training sets allow large scale candidate vetting and performance verification against individual FP scenarios. A Non-Simulated FP training set consisting of real TESS candidates caused primarily by stellar variability and systematic noise is also included.

The machine learning derived probabilities are combined with scenario specific prior probabilities, including the candidates’ positional probabilities, to compute the final posterior probabilities. Candidates with a planetary posterior probability greater than 99% against each FP scenario and whose implied planetary radius is less than 8R are considered to be statistically validated by the pipeline.

In this first version, the pipeline has been developed for candidates with a lightcurve released from the TESS Science Processing Operations Centre, an orbital period between 0.5 and 16 days and a transit depth greater than 300ppm. The pipeline obtained area-under-curve (AUC) scores > 97% on all FP scenarios and > 99% on all but one. Testing on an independent external sample of 1361 pre-classified TOIs, the pipeline achieved an overall accuracy of 91%, demonstrating its effectiveness for automated ranking of TESS candidates.

For a probability threshold of 0.9 the pipeline reached a precision of 97% with a recall score of 66% on these TOIs. The RAVEN pipeline is publicly released as a cloud-hosted app, making it easily accessible to the community.

Andreas Hadjigeorghiou, David J. Armstrong, Kaiming Cui, Marina Lafarga Magro, Luis Agustín Nieto, Rodrigo F. Díaz, Lauren Doyle, Vedad Kunovac

Comments: Submitted to MNRAS. Comments from the community are welcome
Subjects: Earth and Planetary Astrophysics (astro-ph.EP); Instrumentation and Methods for Astrophysics (astro-ph.IM); Machine Learning (cs.LG)
Cite as: arXiv:2509.17645 [astro-ph.EP] (or arXiv:2509.17645v1 [astro-ph.EP] for this version)
https://doi.org/10.48550/arXiv.2509.17645
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Submission history
From: Andreas Hadjigeorghiou
[v1] Mon, 22 Sep 2025 11:50:31 UTC (8,225 KB)
https://arxiv.org/abs/2509.17645
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