Modeling quasar variability through self-organizing map-based neural process

IF 0.8 4区 物理与天体物理 Q4 ASTRONOMY & ASTROPHYSICS
Iva Čvorović‐Hajdinjak
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引用次数: 0

Abstract

Conditional Neural Process (QNPy) has shown to be a good tool for modeling quasar light curves. However, given the complex nature of the source and hence the data represented by light curves, processing could be time-consuming. In some cases, accuracy is not good enough for further analysis. In an attempt to upgrade QNPy, we examine the effect of the prepossessing quasar light curves via the Self-Organizing Map (SOM) algorithm on modeling a large number of quasar light curves. After applying SOM on the SWIFT/BAT data and modeling curves from several clusters, results show the Conditional Neural Process performs better after the SOM clustering. We conclude that the SOM clustering of quasar light curves could be a beneficial prepossessing method for QNPy.
通过基于自组织图谱的神经过程建模类星体的可变性
条件神经过程(QNPy)已被证明是类星体光曲线建模的良好工具。然而,鉴于光源的复杂性,以及光曲线所代表数据的复杂性,处理过程可能非常耗时。在某些情况下,精度还不足以进行进一步分析。为了对 QNPy 进行升级,我们通过自组织映射(SOM)算法研究了类星体光变曲线前置对大量类星体光变曲线建模的影响。在对 SWIFT/BAT 数据应用 SOM 并对多个星团的曲线建模后,结果表明条件神经过程在 SOM 聚类后表现更好。我们得出结论,类星体光变曲线的 SOM 聚类可能是 QNPy 的一种有益的前置方法。
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来源期刊
Serbian Astronomical Journal
Serbian Astronomical Journal ASTRONOMY & ASTROPHYSICS-
CiteScore
1.00
自引率
0.00%
发文量
6
审稿时长
12 weeks
期刊介绍: Serbian Astronomical Journal publishes original observations and researches in all branches of astronomy. The journal publishes: Invited Reviews - review article on some up-to-date topic in astronomy, astrophysics and related fields (written upon invitation only), Original Scientific Papers - article in which are presented previously unpublished author''s own scientific results, Preliminary Reports - original scientific paper, but shorter in length and of preliminary nature, Professional Papers - articles offering experience useful for the improvement of professional practice i.e. article describing methods and techniques, software, presenting observational data, etc. In some cases the journal may publish other contributions, such as In Memoriam notes, Obituaries, Book Reviews, as well as Editorials, Addenda, Errata, Corrigenda, Retraction notes, etc.
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