Blazars are active galactic nuclei with relativistic jets pointed almost directly at Earth. Blazars are characterized by strong, apparently stochastic flux variability at virtually all observed wavelengths and timescales, from minutes to years, the physical origin of which is still poorly understood. In the high-energy gamma-ray band, the Large Area Telescope aboard the Fermi space telescope (Fermi-LAT) has conducted regular monitoring of thousands of blazars since 2008. Deep learning can help uncover structure in gamma-ray blazars' complex variability patterns that traditional methods based on parametric statistical modeling or manual feature engineering may miss. In this work, we propose using a self-supervised Transformer encoder architecture to construct an effective representation of blazar gamma-ray variability. Measurement errors, upper limits, and missing data are accommodated using learned encodings. The model predicts a set of quantiles for the flux probability distribution at each time step, an architecture naturally suited for describing data generated by a stochastic process. As a proof of concept for how the model output can be analyzed to extract scientifically relevant information, a preliminary search for weekly-timescale time-reversal asymmetry in gamma-ray blazar light curves was conducted, finding no significant evidence for asymmetry.
翻译:Blazar是活跃的银河核,其相对论喷射机几乎直接指向地球。Blazar的特点是几乎所有观测到的波长和时间尺度,从几分钟到几年,其物理来源仍然不甚为人理解。在高能伽马射线波段,Fermi空间望远镜(Fermi-LAT)上的大型区域望远镜自2008年以来对数千个闪光弹进行了定期监测。深层次的学习有助于发现基于参数统计模型或手动特征工程的传统方法可能错失的伽马射线火焰复杂变异模式的结构。在这项工作中,我们提议使用一个自上型变异变变变变变器结构来构建一个有效的闪光伽马射线变异信号。测量误差、上限和缺失的数据使用学习过的编码。模型预测了每步每步移动概率分布的一组孔,一个自然适合描述由随机过程生成的数据的结构。作为模型输出如何分析用于提取与科学相关的数据的概念的证明,为每星期一次的精确度精确度数据基度进行了初步搜索。