中文

Interpretable Human-Label-Free Deep Learning for Real-Bogus Classification with Uncertainty Quantification

天体物理仪器与方法 2026-07-06 v1 星系天体物理 高能天体物理现象 人工智能 机器学习

摘要

Time-domain surveys generate many transient candidates, making Real-Bogus classification a critical step in automated discovery pipelines. Reliable labels are costly, while community labels can be noisy and survey-dependent. We aim to develop a Real-Bogus classification framework that can be trained without human-labeled data using injected transients and bogus-dominated survey data, remains robust under strong class contamination, and provides calibrated uncertainty quantification. We combine simulated transient injections with a contaminated survey class and train a dual-network model using asymmetric co-teaching for classes with different label-noise levels. We evaluate performance on a benchmark subset and analyze the learned representation with latent-space visualization tools. For uncertainty quantification (UQ), we compare MC dropout and deep ensembles and propose a low-cost hybrid strategy that exploits the dual-network setting to improve calibration. We extend the evaluation to the light-curve domain to assess recovery of light-curve classes. The method achieves strong Real-Bogus performance on the labeled subset and remains stable under severe class contamination. It recovers transient light-curve classes with high fidelity, while single-source identification is limited by ambiguity in light-curve-derived labels. Our hybrid UQ approach achieves competitive calibration relative to more expensive ensemble baselines. Latent-space analyses indicate that uncertainty aligns with the decision boundary and reveal subclasses within the bogus population. Our results show that injection-driven, weakly supervised training can enable scalable and consistent Real-Bogus classification without human-labeled training data while providing calibrated uncertainties. The method is suited for transfer to forthcoming surveys by re-running the injection-based training pipeline.

引用

@article{arxiv.2607.05393,
  title  = {Interpretable Human-Label-Free Deep Learning for Real-Bogus Classification with Uncertainty Quantification},
  author = {Raphaël Bonnet-Guerrini and Bruno Sanchez and Dominique Fouchez and Benjamin Racine and Maya Guy and Mariam Sabalbal and Manal Yassine and Vincenzo Piuri},
  journal= {arXiv preprint arXiv:2607.05393},
  year   = {2026}
}

备注

Submitted to Astronomy & Astrophysics, revised after first referee report